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How to Write a Literary Analysis Essay | A Step-by-Step Guide

Published on January 30, 2020 by Jack Caulfield . Revised on August 14, 2023.

Literary analysis means closely studying a text, interpreting its meanings, and exploring why the author made certain choices. It can be applied to novels, short stories, plays, poems, or any other form of literary writing.

A literary analysis essay is not a rhetorical analysis , nor is it just a summary of the plot or a book review. Instead, it is a type of argumentative essay where you need to analyze elements such as the language, perspective, and structure of the text, and explain how the author uses literary devices to create effects and convey ideas.

Before beginning a literary analysis essay, it’s essential to carefully read the text and c ome up with a thesis statement to keep your essay focused. As you write, follow the standard structure of an academic essay :

  • An introduction that tells the reader what your essay will focus on.
  • A main body, divided into paragraphs , that builds an argument using evidence from the text.
  • A conclusion that clearly states the main point that you have shown with your analysis.

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Table of contents

Step 1: reading the text and identifying literary devices, step 2: coming up with a thesis, step 3: writing a title and introduction, step 4: writing the body of the essay, step 5: writing a conclusion, other interesting articles.

The first step is to carefully read the text(s) and take initial notes. As you read, pay attention to the things that are most intriguing, surprising, or even confusing in the writing—these are things you can dig into in your analysis.

Your goal in literary analysis is not simply to explain the events described in the text, but to analyze the writing itself and discuss how the text works on a deeper level. Primarily, you’re looking out for literary devices —textual elements that writers use to convey meaning and create effects. If you’re comparing and contrasting multiple texts, you can also look for connections between different texts.

To get started with your analysis, there are several key areas that you can focus on. As you analyze each aspect of the text, try to think about how they all relate to each other. You can use highlights or notes to keep track of important passages and quotes.

Language choices

Consider what style of language the author uses. Are the sentences short and simple or more complex and poetic?

What word choices stand out as interesting or unusual? Are words used figuratively to mean something other than their literal definition? Figurative language includes things like metaphor (e.g. “her eyes were oceans”) and simile (e.g. “her eyes were like oceans”).

Also keep an eye out for imagery in the text—recurring images that create a certain atmosphere or symbolize something important. Remember that language is used in literary texts to say more than it means on the surface.

Narrative voice

Ask yourself:

  • Who is telling the story?
  • How are they telling it?

Is it a first-person narrator (“I”) who is personally involved in the story, or a third-person narrator who tells us about the characters from a distance?

Consider the narrator’s perspective . Is the narrator omniscient (where they know everything about all the characters and events), or do they only have partial knowledge? Are they an unreliable narrator who we are not supposed to take at face value? Authors often hint that their narrator might be giving us a distorted or dishonest version of events.

The tone of the text is also worth considering. Is the story intended to be comic, tragic, or something else? Are usually serious topics treated as funny, or vice versa ? Is the story realistic or fantastical (or somewhere in between)?

Consider how the text is structured, and how the structure relates to the story being told.

  • Novels are often divided into chapters and parts.
  • Poems are divided into lines, stanzas, and sometime cantos.
  • Plays are divided into scenes and acts.

Think about why the author chose to divide the different parts of the text in the way they did.

There are also less formal structural elements to take into account. Does the story unfold in chronological order, or does it jump back and forth in time? Does it begin in medias res —in the middle of the action? Does the plot advance towards a clearly defined climax?

With poetry, consider how the rhyme and meter shape your understanding of the text and your impression of the tone. Try reading the poem aloud to get a sense of this.

In a play, you might consider how relationships between characters are built up through different scenes, and how the setting relates to the action. Watch out for  dramatic irony , where the audience knows some detail that the characters don’t, creating a double meaning in their words, thoughts, or actions.

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Your thesis in a literary analysis essay is the point you want to make about the text. It’s the core argument that gives your essay direction and prevents it from just being a collection of random observations about a text.

If you’re given a prompt for your essay, your thesis must answer or relate to the prompt. For example:

Essay question example

Is Franz Kafka’s “Before the Law” a religious parable?

Your thesis statement should be an answer to this question—not a simple yes or no, but a statement of why this is or isn’t the case:

Thesis statement example

Franz Kafka’s “Before the Law” is not a religious parable, but a story about bureaucratic alienation.

Sometimes you’ll be given freedom to choose your own topic; in this case, you’ll have to come up with an original thesis. Consider what stood out to you in the text; ask yourself questions about the elements that interested you, and consider how you might answer them.

Your thesis should be something arguable—that is, something that you think is true about the text, but which is not a simple matter of fact. It must be complex enough to develop through evidence and arguments across the course of your essay.

Say you’re analyzing the novel Frankenstein . You could start by asking yourself:

Your initial answer might be a surface-level description:

The character Frankenstein is portrayed negatively in Mary Shelley’s Frankenstein .

However, this statement is too simple to be an interesting thesis. After reading the text and analyzing its narrative voice and structure, you can develop the answer into a more nuanced and arguable thesis statement:

Mary Shelley uses shifting narrative perspectives to portray Frankenstein in an increasingly negative light as the novel goes on. While he initially appears to be a naive but sympathetic idealist, after the creature’s narrative Frankenstein begins to resemble—even in his own telling—the thoughtlessly cruel figure the creature represents him as.

Remember that you can revise your thesis statement throughout the writing process , so it doesn’t need to be perfectly formulated at this stage. The aim is to keep you focused as you analyze the text.

Finding textual evidence

To support your thesis statement, your essay will build an argument using textual evidence —specific parts of the text that demonstrate your point. This evidence is quoted and analyzed throughout your essay to explain your argument to the reader.

It can be useful to comb through the text in search of relevant quotations before you start writing. You might not end up using everything you find, and you may have to return to the text for more evidence as you write, but collecting textual evidence from the beginning will help you to structure your arguments and assess whether they’re convincing.

To start your literary analysis paper, you’ll need two things: a good title, and an introduction.

Your title should clearly indicate what your analysis will focus on. It usually contains the name of the author and text(s) you’re analyzing. Keep it as concise and engaging as possible.

A common approach to the title is to use a relevant quote from the text, followed by a colon and then the rest of your title.

If you struggle to come up with a good title at first, don’t worry—this will be easier once you’ve begun writing the essay and have a better sense of your arguments.

“Fearful symmetry” : The violence of creation in William Blake’s “The Tyger”

The introduction

The essay introduction provides a quick overview of where your argument is going. It should include your thesis statement and a summary of the essay’s structure.

A typical structure for an introduction is to begin with a general statement about the text and author, using this to lead into your thesis statement. You might refer to a commonly held idea about the text and show how your thesis will contradict it, or zoom in on a particular device you intend to focus on.

Then you can end with a brief indication of what’s coming up in the main body of the essay. This is called signposting. It will be more elaborate in longer essays, but in a short five-paragraph essay structure, it shouldn’t be more than one sentence.

Mary Shelley’s Frankenstein is often read as a crude cautionary tale about the dangers of scientific advancement unrestrained by ethical considerations. In this reading, protagonist Victor Frankenstein is a stable representation of the callous ambition of modern science throughout the novel. This essay, however, argues that far from providing a stable image of the character, Shelley uses shifting narrative perspectives to portray Frankenstein in an increasingly negative light as the novel goes on. While he initially appears to be a naive but sympathetic idealist, after the creature’s narrative Frankenstein begins to resemble—even in his own telling—the thoughtlessly cruel figure the creature represents him as. This essay begins by exploring the positive portrayal of Frankenstein in the first volume, then moves on to the creature’s perception of him, and finally discusses the third volume’s narrative shift toward viewing Frankenstein as the creature views him.

Some students prefer to write the introduction later in the process, and it’s not a bad idea. After all, you’ll have a clearer idea of the overall shape of your arguments once you’ve begun writing them!

If you do write the introduction first, you should still return to it later to make sure it lines up with what you ended up writing, and edit as necessary.

The body of your essay is everything between the introduction and conclusion. It contains your arguments and the textual evidence that supports them.

Paragraph structure

A typical structure for a high school literary analysis essay consists of five paragraphs : the three paragraphs of the body, plus the introduction and conclusion.

Each paragraph in the main body should focus on one topic. In the five-paragraph model, try to divide your argument into three main areas of analysis, all linked to your thesis. Don’t try to include everything you can think of to say about the text—only analysis that drives your argument.

In longer essays, the same principle applies on a broader scale. For example, you might have two or three sections in your main body, each with multiple paragraphs. Within these sections, you still want to begin new paragraphs at logical moments—a turn in the argument or the introduction of a new idea.

Robert’s first encounter with Gil-Martin suggests something of his sinister power. Robert feels “a sort of invisible power that drew me towards him.” He identifies the moment of their meeting as “the beginning of a series of adventures which has puzzled myself, and will puzzle the world when I am no more in it” (p. 89). Gil-Martin’s “invisible power” seems to be at work even at this distance from the moment described; before continuing the story, Robert feels compelled to anticipate at length what readers will make of his narrative after his approaching death. With this interjection, Hogg emphasizes the fatal influence Gil-Martin exercises from his first appearance.

Topic sentences

To keep your points focused, it’s important to use a topic sentence at the beginning of each paragraph.

A good topic sentence allows a reader to see at a glance what the paragraph is about. It can introduce a new line of argument and connect or contrast it with the previous paragraph. Transition words like “however” or “moreover” are useful for creating smooth transitions:

… The story’s focus, therefore, is not upon the divine revelation that may be waiting beyond the door, but upon the mundane process of aging undergone by the man as he waits.

Nevertheless, the “radiance” that appears to stream from the door is typically treated as religious symbolism.

This topic sentence signals that the paragraph will address the question of religious symbolism, while the linking word “nevertheless” points out a contrast with the previous paragraph’s conclusion.

Using textual evidence

A key part of literary analysis is backing up your arguments with relevant evidence from the text. This involves introducing quotes from the text and explaining their significance to your point.

It’s important to contextualize quotes and explain why you’re using them; they should be properly introduced and analyzed, not treated as self-explanatory:

It isn’t always necessary to use a quote. Quoting is useful when you’re discussing the author’s language, but sometimes you’ll have to refer to plot points or structural elements that can’t be captured in a short quote.

In these cases, it’s more appropriate to paraphrase or summarize parts of the text—that is, to describe the relevant part in your own words:

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The conclusion of your analysis shouldn’t introduce any new quotations or arguments. Instead, it’s about wrapping up the essay. Here, you summarize your key points and try to emphasize their significance to the reader.

A good way to approach this is to briefly summarize your key arguments, and then stress the conclusion they’ve led you to, highlighting the new perspective your thesis provides on the text as a whole:

If you want to know more about AI tools , college essays , or fallacies make sure to check out some of our other articles with explanations and examples or go directly to our tools!

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By tracing the depiction of Frankenstein through the novel’s three volumes, I have demonstrated how the narrative structure shifts our perception of the character. While the Frankenstein of the first volume is depicted as having innocent intentions, the second and third volumes—first in the creature’s accusatory voice, and then in his own voice—increasingly undermine him, causing him to appear alternately ridiculous and vindictive. Far from the one-dimensional villain he is often taken to be, the character of Frankenstein is compelling because of the dynamic narrative frame in which he is placed. In this frame, Frankenstein’s narrative self-presentation responds to the images of him we see from others’ perspectives. This conclusion sheds new light on the novel, foregrounding Shelley’s unique layering of narrative perspectives and its importance for the depiction of character.

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Literary Analysis Essay

Literary Analysis Essay Writing

Last updated on: May 21, 2023

Literary Analysis Essay - Ultimate Guide By Professionals

By: Cordon J.

Reviewed By: Rylee W.

Published on: Dec 3, 2019

Literary Analysis Essay

A literary analysis essay specifically examines and evaluates a piece of literature or a literary work. It also understands and explains the links between the small parts to their whole information.

It is important for students to understand the meaning and the true essence of literature to write a literary essay.

One of the most difficult assignments for students is writing a literary analysis essay. It can be hard to come up with an original idea or find enough material to write about. You might think you need years of experience in order to create a good paper, but that's not true.

This blog post will show you how easy it can be when you follow the steps given here.Writing such an essay involves the breakdown of a book into small parts and understanding each part separately. It seems easy, right?

Trust us, it is not as hard as good book reports but it may also not be extremely easy. You will have to take into account different approaches and explain them in relation with the chosen literary work.

It is a common high school and college assignment and you can learn everything in this blog.

Continue reading for some useful tips with an example to write a literary analysis essay that will be on point. You can also explore our detailed article on writing an analytical essay .

Literary Analysis Essay

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What is a Literary Analysis Essay?

A literary analysis essay is an important kind of essay that focuses on the detailed analysis of the work of literature.

The purpose of a literary analysis essay is to explain why the author has used a specific theme for his work. Or examine the characters, themes, literary devices , figurative language, and settings in the story.

This type of essay encourages students to think about how the book or the short story has been written. And why the author has created this work.

The method used in the literary analysis essay differs from other types of essays. It primarily focuses on the type of work and literature that is being analyzed.

Mostly, you will be going to break down the work into various parts. In order to develop a better understanding of the idea being discussed, each part will be discussed separately.

The essay should explain the choices of the author and point of view along with your answers and personal analysis.

How To Write A Literary Analysis Essay

So how to start a literary analysis essay? The answer to this question is quite simple.

The following sections are required to write an effective literary analysis essay. By following the guidelines given in the following sections, you will be able to craft a winning literary analysis essay.

Introduction

The aim of the introduction is to establish a context for readers. You have to give a brief on the background of the selected topic.

It should contain the name of the author of the literary work along with its title. The introduction should be effective enough to grab the reader’s attention.

In the body section, you have to retell the story that the writer has narrated. It is a good idea to create a summary as it is one of the important tips of literary analysis.

Other than that, you are required to develop ideas and disclose the observed information related to the issue. The ideal length of the body section is around 1000 words.

To write the body section, your observation should be based on evidence and your own style of writing.

It would be great if the body of your essay is divided into three paragraphs. Make a strong argument with facts related to the thesis statement in all of the paragraphs in the body section.

Start writing each paragraph with a topic sentence and use transition words when moving to the next paragraph.

Summarize the important points of your literary analysis essay in this section. It is important to compose a short and strong conclusion to help you make a final impression of your essay.

Pay attention that this section does not contain any new information. It should provide a sense of completion by restating the main idea with a short description of your arguments. End the conclusion with your supporting details.

You have to explain why the book is important. Also, elaborate on the means that the authors used to convey her/his opinion regarding the issue.

For further understanding, here is a downloadable literary analysis essay outline. This outline will help you structure and format your essay properly and earn an A easily.

DOWNLOADABLE LITERARY ANALYSIS ESSAY OUTLINE (PDF)

Types of Literary Analysis Essay

  • Close reading - This method involves attentive reading and detailed analysis. No need for a lot of knowledge and inspiration to write an essay that shows your creative skills.
  • Theoretical - In this type, you will rely on theories related to the selected topic.
  • Historical - This type of essay concerns the discipline of history. Sometimes historical analysis is required to explain events in detail.
  • Applied - This type involves analysis of a specific issue from a practical perspective.
  • Comparative - This type of writing is based on when two or more alternatives are compared

Examples of Literary Analysis Essay

Examples are great to understand any concept, especially if it is related to writing. Below are some great literary analysis essay examples that showcase how this type of essay is written.

A ROSE FOR EMILY LITERARY ANALYSIS ESSAY

TO KILL A MOCKINGBIRD LITERARY ANALYSIS ESSAY

THE GREAT GATSBY LITERARY ANALYSIS ESSAY

THE YELLOW WALLPAPER LITERARY ANALYSIS ESSAY

If you do not have experience in writing essays, this will be a very chaotic process for you. In that case, it is very important for you to conduct good research on the topic before writing.

There are two important points that you should keep in mind when writing a literary analysis essay.

First, remember that it is very important to select a topic in which you are interested. Choose something that really inspires you. This will help you to catch the attention of a reader.

The selected topic should reflect the main idea of writing. In addition to that, it should also express your point of view as well.

Another important thing is to draft a good outline for your literary analysis essay. It will help you to define a central point and division of this into parts for further discussion.

Literary Analysis Essay Topics

Literary analysis essays are mostly based on artistic works like books, movies, paintings, and other forms of art. However, generally, students choose novels and books to write their literary essays.

Some cool, fresh, and good topics and ideas are listed below:

  • Role of the Three Witches in flaming Macbeth’s ambition.
  • Analyze the themes of the Play Antigone,
  • Discuss Ajax as a tragic hero.
  • The Judgement of Paris: Analyze the Reasons and their Consequences.
  • Oedipus Rex: A Doomed Son or a Conqueror?
  • Describe the Oedipus complex and Electra complex in relation to their respective myths.
  • Betrayal is a common theme of Shakespearean tragedies. Discuss
  • Identify and analyze the traits of history in T.S Eliot’s ‘Gerontion’.
  • Analyze the theme of identity crisis in The Great Gatsby.
  • Analyze the writing style of Emily Dickinson.

If you are still in doubt then there is nothing bad in getting professional writers’ help.

We at 5StarEssays.com can help you get a custom paper as per your specified requirements with our do essay for me service.

Our essay writers will help you write outstanding literary essays or any other type of essay. Such as compare and contrast essays, descriptive essays, rhetorical essays. We cover all of these.

So don’t waste your time browsing the internet and place your order now to get your well-written custom paper.

Frequently Asked Questions

What should a literary analysis essay include.

A good literary analysis essay must include a proper and in-depth explanation of your ideas. They must be backed with examples and evidence from the text. Textual evidence includes summaries, paraphrased text, original work details, and direct quotes.

What are the 4 components of literary analysis?

Here are the 4 essential parts of a literary analysis essay;

No literary work is explained properly without discussing and explaining these 4 things.

How do you start a literary analysis essay?

Start your literary analysis essay with the name of the work and the title. Hook your readers by introducing the main ideas that you will discuss in your essay and engage them from the start.

How do you do a literary analysis?

In a literary analysis essay, you study the text closely, understand and interpret its meanings. And try to find out the reasons behind why the author has used certain symbols, themes, and objects in the work.

Why is literary analysis important?

It encourages the students to think beyond their existing knowledge, experiences, and belief and build empathy. This helps in improving the writing skills also.

What is the fundamental characteristic of a literary analysis essay?

Interpretation is the fundamental and important feature of a literary analysis essay. The essay is based on how well the writer explains and interprets the work.

Cordon J.

Law, Finance Essay

Cordon. is a published author and writing specialist. He has worked in the publishing industry for many years, providing writing services and digital content. His own writing career began with a focus on literature and linguistics, which he continues to pursue. Cordon is an engaging and professional individual, always looking to help others achieve their goals.

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Introduction

You’ve been assigned a literary analysis paper—what does that even mean? Is it like a book report that you used to write in high school? Well, not really.

A literary analysis essay asks you to make an original argument about a poem, play, or work of fiction and support that argument with research and evidence from your careful reading of the text.

It can take many forms, such as a close reading of a text, critiquing the text through a particular literary theory, comparing one text to another, or criticizing another critic’s interpretation of the text. While there are many ways to structure a literary essay, writing this kind of essay follows generally follows a similar process for everyone

Crafting a good literary analysis essay begins with good close reading of the text, in which you have kept notes and observations as you read. This will help you with the first step, which is selecting a topic to write about—what jumped out as you read, what are you genuinely interested in? The next step is to focus your topic, developing it into an argument—why is this subject or observation important? Why should your reader care about it as much as you do? The third step is to gather evidence to support your argument, for literary analysis, support comes in the form of evidence from the text and from your research on what other literary critics have said about your topic. Only after you have performed these steps, are you ready to begin actually writing your essay.

Writing a Literary Analysis Essay

How to create a topic and conduct research:.

Writing an Analysis of a Poem, Story, or Play

If you are taking a literature course, it is important that you know how to write an analysis—sometimes called an interpretation or a literary analysis or a critical reading or a critical analysis—of a story, a poem, and a play. Your instructor will probably assign such an analysis as part of the course assessment. On your mid-term or final exam, you might have to write an analysis of one or more of the poems and/or stories on your reading list. Or the dreaded “sight poem or story” might appear on an exam, a work that is not on the reading list, that you have not read before, but one your instructor includes on the exam to examine your ability to apply the active reading skills you have learned in class to produce, independently, an effective literary analysis.You might be asked to write instead or, or in addition to an analysis of a literary work, a more sophisticated essay in which you compare and contrast the protagonists of two stories, or the use of form and metaphor in two poems, or the tragic heroes in two plays.

You might learn some literary theory in your course and be asked to apply theory—feminist, Marxist, reader-response, psychoanalytic, new historicist, for example—to one or more of the works on your reading list. But the seminal assignment in a literature course is the analysis of the single poem, story, novel, or play, and, even if you do not have to complete this assignment specifically, it will form the basis of most of the other writing assignments you will be required to undertake in your literature class. There are several ways of structuring a literary analysis, and your instructor might issue specific instructions on how he or she wants this assignment done. The method presented here might not be identical to the one your instructor wants you to follow, but it will be easy enough to modify, if your instructor expects something a bit different, and it is a good default method, if your instructor does not issue more specific guidelines.You want to begin your analysis with a paragraph that provides the context of the work you are analyzing and a brief account of what you believe to be the poem or story or play’s main theme. At a minimum, your account of the work’s context will include the name of the author, the title of the work, its genre, and the date and place of publication. If there is an important biographical or historical context to the work, you should include that, as well.Try to express the work’s theme in one or two sentences. Theme, you will recall, is that insight into human experience the author offers to readers, usually revealed as the content, the drama, the plot of the poem, story, or play unfolds and the characters interact. Assessing theme can be a complex task. Authors usually show the theme; they don’t tell it. They rarely say, at the end of the story, words to this effect: “and the moral of my story is…” They tell their story, develop their characters, provide some kind of conflict—and from all of this theme emerges. Because identifying theme can be challenging and subjective, it is often a good idea to work through the rest of the analysis, then return to the beginning and assess theme in light of your analysis of the work’s other literary elements.Here is a good example of an introductory paragraph from Ben’s analysis of William Butler Yeats’ poem, “Among School Children.”

“Among School Children” was published in Yeats’ 1928 collection of poems The Tower. It was inspired by a visit Yeats made in 1926 to school in Waterford, an official visit in his capacity as a senator of the Irish Free State. In the course of the tour, Yeats reflects upon his own youth and the experiences that shaped the “sixty-year old, smiling public man” (line 8) he has become. Through his reflection, the theme of the poem emerges: a life has meaning when connections among apparently disparate experiences are forged into a unified whole.

In the body of your literature analysis, you want to guide your readers through a tour of the poem, story, or play, pausing along the way to comment on, analyze, interpret, and explain key incidents, descriptions, dialogue, symbols, the writer’s use of figurative language—any of the elements of literature that are relevant to a sound analysis of this particular work. Your main goal is to explain how the elements of literature work to elucidate, augment, and develop the theme. The elements of literature are common across genres: a story, a narrative poem, and a play all have a plot and characters. But certain genres privilege certain literary elements. In a poem, for example, form, imagery and metaphor might be especially important; in a story, setting and point-of-view might be more important than they are in a poem; in a play, dialogue, stage directions, lighting serve functions rarely relevant in the analysis of a story or poem.

The length of the body of an analysis of a literary work will usually depend upon the length of work being analyzed—the longer the work, the longer the analysis—though your instructor will likely establish a word limit for this assignment. Make certain that you do not simply paraphrase the plot of the story or play or the content of the poem. This is a common weakness in student literary analyses, especially when the analysis is of a poem or a play.

Here is a good example of two body paragraphs from Amelia’s analysis of “Araby” by James Joyce.

Within the story’s first few paragraphs occur several religious references which will accumulate as the story progresses. The narrator is a student at the Christian Brothers’ School; the former tenant of his house was a priest; he left behind books called The Abbot and The Devout Communicant. Near the end of the story’s second paragraph the narrator describes a “central apple tree” in the garden, under which is “the late tenant’s rusty bicycle pump.” We may begin to suspect the tree symbolizes the apple tree in the Garden of Eden and the bicycle pump, the snake which corrupted Eve, a stretch, perhaps, until Joyce’s fall-of-innocence theme becomes more apparent.

The narrator must continue to help his aunt with her errands, but, even when he is so occupied, his mind is on Mangan’s sister, as he tries to sort out his feelings for her. Here Joyce provides vivid insight into the mind of an adolescent boy at once elated and bewildered by his first crush. He wants to tell her of his “confused adoration,” but he does not know if he will ever have the chance. Joyce’s description of the pleasant tension consuming the narrator is conveyed in a striking simile, which continues to develop the narrator’s character, while echoing the religious imagery, so important to the story’s theme: “But my body was like a harp, and her words and gestures were like fingers, running along the wires.”

The concluding paragraph of your analysis should realize two goals. First, it should present your own opinion on the quality of the poem or story or play about which you have been writing. And, second, it should comment on the current relevance of the work. You should certainly comment on the enduring social relevance of the work you are explicating. You may comment, though you should never be obliged to do so, on the personal relevance of the work. Here is the concluding paragraph from Dao-Ming’s analysis of Oscar Wilde’s The Importance of Being Earnest.

First performed in 1895, The Importance of Being Earnest has been made into a film, as recently as 2002 and is regularly revived by professional and amateur theatre companies. It endures not only because of the comic brilliance of its characters and their dialogue, but also because its satire still resonates with contemporary audiences. I am still amazed that I see in my own Asian mother a shadow of Lady Bracknell, with her obsession with finding for her daughter a husband who will maintain, if not, ideally, increase the family’s social status. We might like to think we are more liberated and socially sophisticated than our Victorian ancestors, but the starlets and eligible bachelors who star in current reality television programs illustrate the extent to which superficial concerns still influence decisions about love and even marriage. Even now, we can turn to Oscar Wilde to help us understand and laugh at those who are earnest in name only.

Dao-Ming’s conclusion is brief, but she does manage to praise the play, reaffirm its main theme, and explain its enduring appeal. And note how her last sentence cleverly establishes that sense of closure that is also a feature of an effective analysis.

You may, of course, modify the template that is presented here. Your instructor might favour a somewhat different approach to literary analysis. Its essence, though, will be your understanding and interpretation of the theme of the poem, story, or play and the skill with which the author shapes the elements of literature—plot, character, form, diction, setting, point of view—to support the theme.

Academic Writing Tips : How to Write a Literary Analysis Paper. Authored by: eHow. Located at: https://youtu.be/8adKfLwIrVk. License: All Rights Reserved. License Terms: Standard YouTube license

BC Open Textbooks: English Literature Victorians and Moderns: https://opentextbc.ca/englishliterature/back-matter/appendix-5-writing-an-analysis-of-a-poem-story-and-play/

Literary Analysis

The challenges of writing about english literature.

Writing begins with the act of reading . While this statement is true for most college papers, strong English papers tend to be the product of highly attentive reading (and rereading). When your instructors ask you to do a “close reading,” they are asking you to read not only for content, but also for structures and patterns. When you perform a close reading, then, you observe how form and content interact. In some cases, form reinforces content: for example, in John Donne’s Holy Sonnet 14, where the speaker invites God’s “force” “to break, blow, burn and make [him] new.” Here, the stressed monosyllables of the verbs “break,” “blow” and “burn” evoke aurally the force that the speaker invites from God. In other cases, form raises questions about content: for example, a repeated denial of guilt will likely raise questions about the speaker’s professed innocence. When you close read, take an inductive approach. Start by observing particular details in the text, such as a repeated image or word, an unexpected development, or even a contradiction. Often, a detail–such as a repeated image–can help you to identify a question about the text that warrants further examination. So annotate details that strike you as you read. Some of those details will eventually help you to work towards a thesis. And don’t worry if a detail seems trivial. If you can make a case about how an apparently trivial detail reveals something significant about the text, then your paper will have a thought-provoking thesis to argue.

Common Types of English Papers Many assignments will ask you to analyze a single text. Others, however, will ask you to read two or more texts in relation to each other, or to consider a text in light of claims made by other scholars and critics. For most assignments, close reading will be central to your paper. While some assignment guidelines will suggest topics and spell out expectations in detail, others will offer little more than a page limit. Approaching the writing process in the absence of assigned topics can be daunting, but remember that you have resources: in section, you will probably have encountered some examples of close reading; in lecture, you will have encountered some of the course’s central questions and claims. The paper is a chance for you to extend a claim offered in lecture, or to analyze a passage neglected in lecture. In either case, your analysis should do more than recapitulate claims aired in lecture and section. Because different instructors have different goals for an assignment, you should always ask your professor or TF if you have questions. These general guidelines should apply in most cases:

  • A close reading of a single text: Depending on the length of the text, you will need to be more or less selective about what you choose to consider. In the case of a sonnet, you will probably have enough room to analyze the text more thoroughly than you would in the case of a novel, for example, though even here you will probably not analyze every single detail. By contrast, in the case of a novel, you might analyze a repeated scene, image, or object (for example, scenes of train travel, images of decay, or objects such as or typewriters). Alternately, you might analyze a perplexing scene (such as a novel’s ending, albeit probably in relation to an earlier moment in the novel). But even when analyzing shorter works, you will need to be selective. Although you might notice numerous interesting details as you read, not all of those details will help you to organize a focused argument about the text. For example, if you are focusing on depictions of sensory experience in Keats’ “Ode to a Nightingale,” you probably do not need to analyze the image of a homeless Ruth in stanza 7, unless this image helps you to develop your case about sensory experience in the poem.
  • A theoretically-informed close reading. In some courses, you will be asked to analyze a poem, a play, or a novel by using a critical theory (psychoanalytic, postcolonial, gender, etc). For example, you might use Kristeva’s theory of abjection to analyze mother-daughter relations in Toni Morrison’s novel Beloved. Critical theories provide focus for your analysis; if “abjection” is the guiding concept for your paper, you should focus on the scenes in the novel that are most relevant to the concept.
  • A historically-informed close reading. In courses with a historicist orientation, you might use less self-consciously literary documents, such as newspapers or devotional manuals, to develop your analysis of a literary work. For example, to analyze how Robinson Crusoe makes sense of his island experiences, you might use Puritan tracts that narrate events in terms of how God organizes them. The tracts could help you to show not only how Robinson Crusoe draws on Puritan narrative conventions, but also—more significantly—how the novel revises those conventions.
  • A comparison of two texts When analyzing two texts, you might look for unexpected contrasts between apparently similar texts, or unexpected similarities between apparently dissimilar texts, or for how one text revises or transforms the other. Keep in mind that not all of the similarities, differences, and transformations you identify will be relevant to an argument about the relationship between the two texts. As you work towards a thesis, you will need to decide which of those similarities, differences, or transformations to focus on. Moreover, unless instructed otherwise, you do not need to allot equal space to each text (unless this 50/50 allocation serves your thesis well, of course). Often you will find that one text helps to develop your analysis of another text. For example, you might analyze the transformation of Ariel’s song from The Tempest in T. S. Eliot’s poem, The Waste Land. Insofar as this analysis is interested in the afterlife of Ariel’s song in a later poem, you would likely allot more space to analyzing allusions to Ariel’s song in The Waste Land (after initially establishing the song’s significance in Shakespeare’s play, of course).
  • A response paper A response paper is a great opportunity to practice your close reading skills without having to develop an entire argument. In most cases, a solid approach is to select a rich passage that rewards analysis (for example, one that depicts an important scene or a recurring image) and close read it. While response papers are a flexible genre, they are not invitations for impressionistic accounts of whether you liked the work or a particular character. Instead, you might use your close reading to raise a question about the text—to open up further investigation, rather than to supply a solution.
  • A research paper. In most cases, you will receive guidance from the professor on the scope of the research paper. It is likely that you will be expected to consult sources other than the assigned readings. Hollis is your best bet for book titles, and the MLA bibliography (available through e-resources) for articles. When reading articles, make sure that they have been peer reviewed; you might also ask your TF to recommend reputable journals in the field.

Harvard College Writing Program: https://writingproject.fas.harvard.edu/files/hwp/files/bg_writing_english.pdf

In the same way that we talk with our friends about the latest episode of Game of Thrones or newest Marvel movie, scholars communicate their ideas and interpretations of literature through written literary analysis essays. Literary analysis essays make us better readers of literature.

Only through careful reading and well-argued analysis can we reach new understandings and interpretations of texts that are sometimes hundreds of years old. Literary analysis brings new meaning and can shed new light on texts. Building from careful reading and selecting a topic that you are genuinely interested in, your argument supports how you read and understand a text. Using examples from the text you are discussing in the form of textual evidence further supports your reading. Well-researched literary analysis also includes information about what other scholars have written about a specific text or topic.

Literary analysis helps us to refine our ideas, question what we think we know, and often generates new knowledge about literature. Literary analysis essays allow you to discuss your own interpretation of a given text through careful examination of the choices the original author made in the text.

ENG134 – Literary Genres Copyright © by The American Women's College and Jessica Egan is licensed under a Creative Commons Attribution 4.0 International License , except where otherwise noted.

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Writing A Literary Analysis Essay

  • Library Resources
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  • What is an Literary Analysis?
  • Literary Devices & Terms
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  • Using quotes or evidence in your essay
  • APA Format This link opens in a new window
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Elements of a short story, Part 1

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Elements of a short story, Part 2

online tools

Collaborative Mind Mapping  – collaborative brainstorming site

Sample Literary Analysis Essay Outline 

Paper Format and Structure

Introduction, Body, and Conclusion :: Health Sciences, Education and  Wellness Institute

Analyzing Literature and writing a Literary Analysis

Literary Analysis are written in the third person point of view in present tense. Do not use the words I or you in the essay. Your instructor may have you choose from a list of literary works read in class or you can choose your own. Follow the required formatting and instructions of your instructor.

Writing & Analyzing process

First step: Choose a literary work or text. Read & Re-Read the text or short story. Determine the key point or purpose of the literature

Step two: Analyze key elements of the literary work. Determine how they fit in with the author's purpose.

Step three: Put all information together. Determine how all elements fit together towards the main theme of the literary work.

Step four: Brainstorm a list of potential topics. Create a thesis statement based on your analysis of the literary work. 

Step five: search through the text or short story to find textual evidence to support your thesis. Gather information from different but relevant sources both  from the text itself and other  secondary  sources to help to prove your point. All evidence found will be quoted and analyzed throughout your essay to help explain your argument to the reader. 

Step six: Create and outline and begin the rough draft of your essay. 

Step seven: revise and proofread. Write the final draft of essay

Step eight: include a reference or works cited page at the end of the essay and include in-text citations.

When analyzing a literary work pay close attention to the following:

Characters:  A  character  is a person, animal, being, creature, or thing in a story. 

  • Protagonist : The main character of the story
  • Antagonist : The villain of the story
  • Love interest : the protagonist’s object of desire.
  • Confidant : This type of character is the best friend or sidekick of the protagonist
  • Foil  – A foil is a character that has opposite character traits from another character and are meant to help highlight or bring out another’s positive or negative side.
  • Flat  – A flat character has one or two main traits, usually only all positive or negative.
  • Dynamic character : A dynamic character is one who changes over the course of the story.
  • Round character : These characters have many different traits, good and bad, making them more interesting.
  • Static character : A static character does not noticeably change over the course of a story.
  • Symbolic character : A symbolic character represents a concept or theme larger than themselves.
  • Stock character : A stock character is an ordinary character with a fixed set of personality traits.

Setting:  The  setting  is the period of time and geographic location in which a  story  takes place.

Plot:   a literary term used to describe the events that make up a story

Theme:   a universal idea, lesson, or message explored throughout a work of literature. 

Dialogue:  any communication between two characters

Imagery:  a literary device that refers to the use of figurative language to evoke a sensory experience or create a picture with words for a reader.

Figures of Speech:  A word or phrase that is used in a non-literal way to create an effect. 

Tone: A literary device that reflects the writer's attitude toward the subject matter or audience of a literary work.

rhyme or rhythm:  Rhyme is a literary device, featured particularly in poetry, in which identical or similar concluding syllables in different words are repeated. Rhythm can be described as the beat and pace of a poem

Point of view:  the narrative voice through which a story is told.

  • Limited –  the narrator sees only what’s in front of him/her, a spectator of events as they unfold and unable to read any other character’s mind.
  • Omniscient –  narrator sees all. He or she sees what each character is doing and can see into each character’s mind. 
  • Limited Omniscient – narrator can only see into one character’s mind. He/she might see other events happening, but only knows the reasons of one character’s actions in the story.
  • First person: You see events based on the character telling the story
  • Second person: The narrator is speaking to you as the audience

Symbolism:   a literary device in which a writer uses one thing—usually a physical object or phenomenon—to represent something else.

Irony:  a literary device in which contradictory statements or situations reveal a reality that is different from what appears to be true.

Ask some of the following questions when analyzing literary work:

  • Which literary devices were used by the author?
  • How are the characters developed in the content?
  • How does the setting fit in with the mood of the literary work?
  • Does a change in the setting affect the mood, characters, or conflict?
  • What point of view is the literary work written in and how does it effect the plot, characters, setting, and over all theme of the work?
  • What is the over all tone of the literary work? How does the tone impact the author’s message?
  • How are figures of speech such as similes, metaphors, and hyperboles used throughout the text?
  • When was the text written? how does the text fit in with the time period?

Creating an Outline

A literary analysis essay outline is written in standard format: introduction, body paragraphs, and conclusion. An outline will provide a definite structure for your essay.

I. Introduction: Title

A. a hook statement or sentence to draw in readers

B. Introduce your topic for the literary analysis. 

  • Include some background information that is relevant to the piece of literature you are aiming to analyze.

C. Thesis statement: what is your argument or claim for the literary work.

II. Body paragraph

A. first point for your analysis or evidence from thesis

B.  textual evidence   with explanation of how it proves your point

III. second evidence from thesis

A. textual evidence   with explanation of how it proves your point  

IV. third evidence from thesis

V. Conclusion

A. wrap up the essay

B. restate the argument and why its important

C. Don't add any new ideas or arguments

VI: Bibliography: Reference or works cited page

End each body paragraph in the essay with a transitional sentence. 

Links & Resources

Literary Analysis Guide

Discusses how to analyze a passage of text to strengthen your discussion of the literature.

The Writing Center @ UNC-Chapel Hill

Excellent handouts and videos around key writing concepts. Entire section on Writing for Specific Fields, including Drama, Literature (Fiction), and more. Licensed under CC BY NC ND (Creative Commons - Attribution - NonCommercial - No Derivatives).

Creating Literary Analysis (Cordell and Pennington, 2012) – LibreTexts

Resources for Literary Analysis Writing 

Some free resources on this site but some are subscription only

Students Teaching English Paper Strategies 

The Internet Public Library: Literary Criticism

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How to Write a Literary Analysis Essay

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Table of contents

  • 1 Understanding the Assignment
  • 2 Preparatory Work
  • 3.1 First Reading
  • 3.2 Second Reading
  • 3.3 Take Notes
  • 4.1 Defining Your Audience
  • 4.2 The Title of Your Essay
  • 4.3 Literary Analysis Essay Outline
  • 4.4 Introduction
  • 4.5 Body Paragraphs
  • 4.6 Conclusion
  • 5 Revising the Essay
  • 6 In Conclusion

Writing a literary analysis essay is one of the most difficult tasks for a student. When you have to analyze a certain literary work, there is a whole set of rules that you have to follow. The literary analysis structure is rigid, and students often are demoralized by things like that.

Our article hopes to be a comprehensive guide that can explain how to write literary analysis essay. Here is what you will learn:

  • The importance of understanding your assignment and choosing the right topic;
  • Organizing your critical reading into two sessions to get the most out of the text;
  • Crafting the essay with your audience in mind and giving it a logical and easy-to-follow structure;
  • Importance of revising your piece, looking for logical inconsistencies, and proofreading the text.

This way, you will be able to write an essay that has its own identity, its coherence, and great analytical power.

Understanding the Assignment

literature analysis paper

Let’s start with the first obvious step: understanding the assignment. This actually applies to all types of essays and more. Yet, it is an aspect still underestimated by many students. There are so many who rush headlong into a literary text analysis before even figuring out what they need to do. So, let’s see what are the real steps to follow before writing a literary analysis essay.

First, we need to understand why we are doing this and what is a literary analysis essay. The purpose of a literary analysis essay is to evaluate and examine a particular literary work or some aspect of it. It describes the main idea of the book you have read. You need a strong thesis statement, and you always have to make a proper outline for literary analysis essay.

Secondly, you always need to read the prompt carefully. This should serve as your roadmap, and it will guide you towards specific aspects of the literary work. Those are the aspects you will focus on. You should be able to get the main ideas of what to write already from the prompt. Failure to comprehend the prompt could invalidate the entire work and cause you to lose many valuable hours.

Preparatory Work

Great, so we understood what the purpose of a literary analysis is and that it is crucial to understand the prompt. Now, it’s time to do some preparatory work before you start your draft of the literary analysis paper.

When you write a literary analysis essay, the first thing you should do is select a topic. It is usually impossible to talk about a book or poem in its entirety. Choosing a more specific theme is essential. Firstly, because it will make your literary analysis paper more interesting. Secondly, it will also be easier for you to focus on a single aspect. This could be a single character or what style and literary techniques were used by the author.

At this point, it’s time to consider the broader context. For example, if you have picked a character, think about their character’s development and their significance. If you are analyzing literature looking for a specific theme, try to reflect on how it permeates the narrative and what messages it conveys.

Now, it’s time to frame your literary analysis thesis statement. This should be concise and clear. Think of it as the compass that will guide your analysis. Plus, if it’s clear to you, it’ll be clear to your reader as well. Do not underestimate this point because it can make everything way easier when you start. Finally, feel free to read another book review to get inspired.

Critical Reading

It’s time to read the work you will analyze. We talk about what we call critical reading. This is the heart of all literary criticism, and it consists of immersing yourself in the story. Because of this, it is advised not to read the story just once but twice.

First Reading

The first reading will serve to get a general understanding of the literary texts. This means comprehending the storyline, characters, and major plot developments. You should be able to enjoy it without thinking too much about the assignment. So don’t delve too deeply into analysis just yet.

Second Reading

Your second reading should be much more methodical. Here, you start analyzing things concretely without forgetting what your literary analysis thesis is. Resist the temptation to get lost in the narrative’s flow. Instead, go through a thorough examination and identify key literary elements and literary devices, like the plot, the character development, and the mood of the story. But also other literary elements: the symbolism, the protagonists, whether there is a first-person narrator or a third-person perspective, and whether the author uses figurative language when describing the main conflict.

Pay special attention to how these literary elements are interwoven into the narrative. For example, consider how character development influences the plot. Alternatively, how symbolism enhances the mood. Recognizing these connections will be crucial for your analysis. Finally, and this might be the hardest part, try to see how all of these literary analysis elements collectively contribute to the overall impact of the work. Ask yourself whether it all works together to convey the message the author wants to convey or not.

While reading, it’s important to take notes and annotate the text. Even a brief indication could be enough. You can do this to highlight passages or quotes that strike you as significant. But also to make connections between different parts of the story. These annotations and notes will become invaluable when you start a literary analysis essay.

Crafting the Essay

how to write literature analysis essay

Now that you’ve laid the groundwork, it’s time to craft your lit analysis piece. This section will help you do just that. The main points focus on:

  • Understand who you’re writing for and tailor your text accordingly
  • Craft a compelling introduction using a powerful hook and highlighting your thesis statement
  • Structure the body paragraphs in a logical and coherent way
  • Summarize your analysis, summing up the main points and key takeaway

Follow our suggestions, and you shouldn’t have any issues with your work. But, if you are facing a time crunch and need assistance with writing your literary essay, there is an online essay service that can help you. PapersOwl has been providing expert help to countless students with their literary essays for many years. Their team of professional writers is highly qualified and experienced, ensuring that you receive top-quality literary works. With PapersOwl’s assistance, you can rest assured that your literary essay will be well-written and thoroughly analyzed.

Defining Your Audience

Before putting pen to paper, and even when you are familiar with the literary analysis format, take some time to consider your audience. Who are you writing for? Is it your professor or another reader? This will help you understand what type of analysis you are going to write.

The Title of Your Essay

If you are wondering how to choose a title , you should know that some prefer to choose it when they start, while others do it as the last thing before submitting it. Usually, the literary analysis title includes the author’s name and the name of the text you are evaluating. However, that is not always necessary. What matters is to make it brief and interactive and to catch the reader’s attention immediately.

Take this example of literary analysis: “Unmasking the Symbolism: The Enigmatic Power of the Green Light in The Great Gatsby”.

It works because, while introducing the story, it hints at the theme, the specific focus, and the intrigue of unraveling a mystery.

Literary Analysis Essay Outline

Writing a literary analysis essay starts with understanding the information that fills an outline. This means that writing details that belong in how to write an analytical essay should come fairly easily. If it is a struggle to come up with the meat of the essay, a reread of the novel may be necessary. Like any analysis essay, developing an essay requires structure and outline.

Let’s start with the first. Normally in high schools, the basic structure of any form of academic writing of a literature essay, comprises five paragraphs. One of the paragraphs is used in writing the introduction, three for the body, and the remaining literary analysis paragraph for the conclusion.

Every body paragraph must concentrate on a topic. While writing a five-paragraph structured essay, you need to split your thesis into three major analysis topics connected to your essay. You don’t need to write all the points derivable from the literature but the analysis that backs your thesis.

When you start a paragraph, connect it to the previous paragraph and always use a topic sentence to maintain the focus of the reader. This allows every person to understand the content at a glance.

After that, you should find fitting textual evidence to support the topic sentence and the thesis statement it serves. Using textual evidence involves bringing in a relevant quote from the story and describing its relevance. Such quotes should be well introduced and examined if you want to use them. While it is not mandatory to use them, it is effective because it allows to better analyze the author’s figurative language.

Let’s see a concrete literary analysis example to understand this.

✏️ Topic Sentence : In “The Great Gatsby,” Fitzgerald employs vivid descriptions to characterize Jay Gatsby’s extravagant parties.

✏️ Textual Evidence : Gatsby’s parties are described as “gaudy with primary colors” and filled with “music and the laughter of his guests”.

✏️ Literary Analysis : These vibrant descriptions symbolize Gatsby’s attempt to capture the essence of the American Dream. The use of “gaudy” highlights the emptiness of his pursuits.

Now that you know how to write a literature analysis, it’s crucial to distinguish between analysis and summary. A summary only restates the plot or events of the story. Analysis, on the other hand, tries to unveil the meaning of these events. Let’s use an example from another famous book to illustrate the difference.

✏️ Summary : In “To Kill a Mockingbird,” Atticus Finch defends Tom Robinson, an innocent Black man accused of raping a white woman.

✏️ Literary Analysis : Atticus Finch’s defense of Tom Robinson in “To Kill a Mockingbird” is a rather bitter commentary on the racial prejudices of the time. In the book, Harper Lee highlights the rampant racism that plagued Maycomb society.

Literary analysis essay outline

Introduction

The literature analysis essay, like other various academic works, has a typical 5-paragraph-structure . The normal procedure for writing an introduction for your literary analysis essay outline is to start with a hook and then go on to mention brief facts about the author and the literature. After that, make sure to present your thesis statement. Before going ahead, let’s use an example of a good literary analysis introduction. This will make it easier to discuss these points singularly.

“On the shores of East Egg, a green light shines through the darkness. The book is “The Great Gatsby” by F. Scott Fitzgerald, written in 1925, and this is not just a light. It’s much more. It symbolizes the American Dream chased and rejected by Gatsby and the other characters.”

As an introductory paragraph, this has all the characteristics we are looking for. First, opening statements like this introduce a mysterious element that makes the reader curious. This is the hook. After that, the name of the book, the author, and the release year are presented. Finally, a first glimpse of what your original thesis will be – the connection between the book and the topic of the American Dream.

Afterwards, you can finish writing the introduction paragraph for the literary analysis essay with a clue about the content of the essay’s body. This style of writing a literature essay is known as signposting. Signposting should be done more elaborately while writing longer literary essays.

Body Paragraphs

In a literary analysis essay, the body paragraphs are where you go further into your analysis, looking at specific features of the literature. Each paragraph should focus on a particular aspect, such as character development, theme, or symbolism, and provide textual evidence to back up your interpretation. This structured approach allows for a thorough exploration of the literary work.

“In ‘The Great Gatsby,’ Fitzgerald uses the symbol of the green light to represent Gatsby’s perpetual quest for the unattainable – specifically, his idealized love for Daisy Buchanan. Situated at the end of Daisy’s dock, the green light shines across the bay to Gatsby’s mansion, symbolizing the distance between reality and his dreams. This light is not just a physical beacon; it’s a metaphor for Gatsby’s aspiration and the American Dream itself. Fitzgerald artfully illustrates this through Gatsby’s yearning gaze towards the light, reflecting his deep desire for a future that reconnects him with his past love, yet tragically remains just out of reach. This persistent yearning is a poignant commentary on the nature of aspiration and the illusion of the American Dream.”

The final paragraph, as usual, is the literary analysis conclusion. Writing a conclusion of your essay should be about putting the finishing touches on it. In this section, all you need to do is rephrase your aforementioned main point and supporting points and try to make them clearer to the person who reads them. But also, restate your thesis and add some interesting thoughts.

However, if you don’t understand how to write a conclusion and are just thinking, “ Write my essay for me , please”, there are solutions. At PapersOwl, you get expert writers to help you with your analysis, ensuring you meet your deadline.

Let’s go back to Gatsby’s green light and look at how to write a literary analysis example of a good conclusion:

“Our journey through the green light of “The Great Gatsby” ends here. In this literary essay, we analyzed Fitzgerald’s style and the way this allowed him to grasp the secret of the American Dream. In doing so, we realized that the American Dream is not just about one person’s dream. Rather, it is about everyone who struggles for something that will never be realized.”

Here we have it all: restating the thesis, summing up the main points, understanding the literary devices, and adding some thoughts.

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Revising the Essay

At this point, you’re almost done. After you write a literary analysis, it is usually time for a revision. This is where you have a chance to refine and polish your work.

Read your analysis of literature again to check coherence and consistency. This means that your ideas should flow smoothly into each other, thus creating a coherent narrative voice. The tone should always be consistent: it would be a terrible mistake to have a body written in a style and a conclusion in a different style.

Use this final revision to refine the thesis and overall the literary argument essay. If you see there are some flaws in your discourse or some weak and unsupported claims, this is your last chance to fix them. Remember, your thesis should always be clear and effective.

Finally, do not underrate the possibility of spelling and punctuation errors. We all make mistakes of that kind. Read your piece a few times to ensure that every word is written correctly. Nothing bad with a couple of typos, but it’s even better if there is none! Finally, check if you used transition words appropriately.

The revision process involves multiple rounds of review and refinement. You could also consider seeking feedback from peers or professors. This way, you could gain a new perspective on your literary analysis.

In Conclusion

Educational institutions use works like the textual analysis essay to improve the learning abilities of students. Although it might seem complex, with the basic knowledge of how to go about it and the help of experts, you won’t find it difficult. Besides, if everything else fails, you can still try buying essays online at PapersOwl.

In this guide, we went through all the steps necessary to write a successful literary analysis. We began by understanding the assignment’s purpose and then explored preparatory work, the structure of a literature essay critical reading, and the actual crafting. In particular, we showed how to divide it into an introduction, body, and conclusion. Now it’s your turn to write a literary criticism essay!

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How to write a literary analysis essay.

Lesley J. Vos

Several types of assignments primarily cause confusion among students, and literary essays are one of them. Writing such essays can require a deep understanding of a concept and a set of specific skills, so they can frequently become challenging. Some college students don’t know how to handle a literary essay and, therefore, don’t like it. 

But fear not; with our complete guide, you will be able to handle literary analysis essays like a seasoned pro and impress your professor with top-notch papers. All it takes to succeed is to follow the steps in our article step by step and invest diligence, perseverance, and time in your writing.

What Is a Literary Analysis Essay?

An essay that seeks to analyze and interpret a piece of literature by focusing on its story, characters, themes, and symbols is known as a literary analysis essay . Such a paper goes beyond just summarizing the text; it analyzes the literary devices used, the author’s objectives, and the text’s more profound implications.

The writer must conduct an in-depth analysis to reveal the work’s hidden meanings. Such papers usually aim to inspire readers to value the intricacy and creativity of narrative writing. 

How to Write an Essay About a Book: What Is the Purpose of a Literary Essay?

Literary analysis essays dissect the work from every angle to find deeper meaning in a piece of literature than what meets the eye. This essay sheds light on the author’s intentions by critically analyzing the text’s themes, characters, settings, and literary devices. Literary analysis illuminates the challenges of language and storytelling, helping students to develop analytical and critical thinking abilities. 

How to Write a Literary Analysis Essay: Seven Steps to Success

To write a quality literary essay, you must set aside a significant amount of time because it always requires studying the literary piece, thorough research, and decent writing skills. So, how to write a literary essay? It always starts with some reading! 

Step One: Carefully Read the Text Multiple Times

Remember that you are writing about a book or novel when dealing with literary essays. This fact is important enough to be mentioned in the essay type’s title! Hence, the obvious first step to start preparation for writing is reading. Depending on the type of assignment, you will either have to choose an essay topic yourself or use one assigned by the professor. 

So, the first step is to read the material thoroughly and make notes. If you want to do an excellent job of analyzing what you read, pay attention to what strikes you as interesting, surprising, or even confusing.

In literary analysis, your aim isn’t just to recount the story’s events; it’s to penetrate the writing and feel the text’s structure and its actual meaning. Literary devices (parts of text used to express meaning and produce effects) are what you should be looking for most of all. Looking for links between texts is another strategy when analyzing and contrasting numerous texts.

You might begin your analysis by concentrating on a few critical topics. Keep in mind the connection of the text’s elements as you examine them. Notes or highlights might help you remember key sections and quotes. 

If you feel like you struggle to conduct proper notes, it would be best to answer the following set of questions: 

  • What impressed you? Have you thought about a specific scene, sentence, or image for quite some time? If it captivated you, you can likely use it as a basis for an interesting argument. 
  • Did anything perplex you? Perhaps the unexpected behavior of a character caught you off guard, or maybe the book’s climax left you bewildered. A literary work with a confusing moment is like a garment with a loose thread: if you pull on it, the whole thing unravels. To gain valuable insights about the work overall, ask yourself why the author chose to write about that character or situation in that particular way. 
  • Were any patterns apparent to you? Is there a word or picture the main character uses that keeps popping up in the novel? You will have nearly all of your essay planned out if you can identify the pattern, determine its relevance, and how it runs across the text. 
  • Did you notice any contradictions? Literary essays of the highest quality acknowledge and explain the complexity inherent in great literary works. The foundation of a stellar essay is in the ability to deconstruct a literary piece. 

A proper answer to each of these questions can become an excellent foundation for your future literary analysis essay. We recommend choosing one central statement and several related critical arguments. While taking notes, you can plan your arguments’ structure and uniform distribution among the paper’s chapters.

How To Write A Literary Analysis Essay

Step Two: Develop the Thesis 

After you have settled on a question to answer, it’s time to start searching the book for relevant information. As long as you keep gathering information and ideas and allow them to simmer, it’s okay if you have yet to figure out what you want to say. Write down any references to your theme, whether passages, symbols, images, or scenes. You will begin to see patterns in these instances at some point, and your thesis will start to take shape. 

To develop a solid thesis you should gather the evidence. We recommend remembering the basic elements of the story to bolster your analysis: 

  • Plot. Every single thing that happens in the book.
  • Characters. The people who act in a literary piece. The protagonist is the central figure in a story.
  • Conflict. The primary tension of the work. Typically, the protagonist is driven to achieve a goal while being obstructed by forces that work against them, known as antagonists.
  • Setting. A story’s setting can be described by location, historical period, weather, social climate, and economic circumstances.
  • Narrator. Whoever is narrating the tale. The narrator’s role can range from providing an objective account of events to expressing the views and thoughts of a character or characters.
  • Themes. Themes are the work’s core concepts or messages, typically abstract concepts about individuals, society, or life in general. A theme could be conflicting or even antagonistic.

It is time to create the thesis statement when you have reviewed the data and decided how you will answer the questions. An argumentative thesis states an assertion regarding a piece of literature and must be backed up by proof and reasoning. Literary essays revolve around a thesis statement, and most of the paper should be devoted to proving this point.

How To Write A Literary Analysis Essay

Step Three: Develop Your Arguments 

The body paragraphs of your essay will lay out the arguments and evidence that support your thesis. You may find yourself juggling steps since you will need a clearer idea of organizing your argument before you can draft your thesis statement.

There is no universally applicable strategy. For example, you could be asked to analyze and contrast two characters in a particular piece of literature or follow a specific image. Different kinds of argumentation are necessary for answering these questions. Read more to learn about constructing arguments for versatile essay types! 

  • Compare and contrast. There is a significant chance you’ve encountered this type of essay before, so there is nothing new here. Your argument structure in a literary analysis will be identical to any other compare-and-contrast essay. Both subject-by-subject and point-by-point approaches are absolutely acceptable. You could combine the two methods; for instance, you could spend a paragraph outlining the main character’s characteristics in general, then compare and contrast them in a couple of paragraphs. 
  • Trace. It seems simple, doesn’t it? Spoiler: it doesn’t. Your instructor isn’t looking for a list of examples. The difference between summarizing and analyzing is that the person reading your work wants you to draw connections between the scenes. To make your examples more organized, sort them into categories and classes. Last but not least, remember the big picture at all times. Once you’ve selected and examined your samples, you should better grasp the work and how the image, symbol, or phrase you choose contributed to developing the work’s main themes and stylistic methods.
  • Debate. This essay asks you to argue for or against a particular point of view on the work’s aesthetics, ethics, or morality. Some questions may ask you to evaluate the work as a whole, while others may focus on specific people or groups. First, you should know that your arguments should not be based only on your emotions. Read the text carefully and look for proof; every literary essay requires this. Second, remember that the most compelling literary essays present unexpected and contradictory views. Make an effort to be creative. 

Step Four: Write Title and Introduction

How do you start writing your literary analysis essay? It’s obvious: always start from the title! At this point, you are probably done making notes and reading books, so it is finally time to actually start writing (wow!). 

Title 

Make sure the title of your analysis explains what it will be about. Typically, it will include the author’s name and the text(s) you are evaluating. Be as brief and exciting as you can be. Rest assured that coming up with a solid title will become second nature after you start writing the essay and have a better grasp of your ideas. So, don’t stress if you find this task challenging at first.

Introduction

A brief synopsis of your argument is given in the essay’s introduction. You should summarize the essay’s structure and include the thesis statement; a standard introduction introduces the work and author before moving on. You might highlight a specific device you want to emphasize, or another option is to suggest a commonly accepted view of the book and show how your thesis will disprove it. After that, you can wrap up the intro by providing a sneak peek at the main chapters.

Below you will find some general tips to make your introduction more convincing and catching for readers. 

  • Provide the context. The purpose of an introduction is to set the stage and inform the reader of what is to come. Which book are you talking about? Which characters? Do you have a particular subject in mind? 
  • Present your thesis. You can expect to see the thesis towards the conclusion of your introduction. 
  • Answer the reader’s questions. Just how significant is this subject, and what makes your stance on it unique? An effective opening will hook the reader by implying that your argument is unexpected or goes against common sense.  
  • Announce the following essay. After reading the introduction, the reader should have a solid idea of the essay’s scope and the steps you’ll take to prove your thesis. You shouldn’t detail every single step, but you should give some indication of the structure you intend to use. 

Step Five: Write Body Chapters 

After you’ve penned the introduction, it’s time to turn your arguments into body paragraphs. Your argumentation will dictate the organization of your essay’s body paragraphs, but regardless of your choice, they must accomplish the following: 

  • Make good use of transitions. Paragraphs in a literary essay should be well-connected to one another and the subject matter. Imagine that every paragraph is a reaction to the one before it. Use transitional words and phrases like similarly , on the contrary , therefore , and additionally to signal the type of response you’re offering. 
  • Construct a central idea to its fullest extent. Stay on topic and avoid wordiness in your paragraph. The body paragraphs are like bricks; if any of them are weak, the whole building would fall. 
  • Use a powerful topic sentence to start. Similar to highway signs, topic sentences direct the reader to the current and future locations of the text. In addition to introducing the reader to the topic of the next paragraph, a strong topic sentence should provide them with an idea of the following arguments. 

Step Six: Write Your Essay’s Conclusion

Just as you introduced the issue and stated your thesis in the introduction, you will need to reinstate the main points in the conclusion. An excellent conclusion should: 

  • Move from the specific to the general. Your essay has probably focused on a tiny portion of the novel or poem, such as a single character or a chapter. It would be smart to demonstrate how this topic affects the larger body of work.
  • Not overwhelm the reader. You shouldn’t use the conclusion to stuff your essay with all the great ideas you had during brainstorming sessions but couldn’t fit into the main body of your essay. Instead, your conclusion should offer fresh paths of thought. 

Proofreading and Editing: How to Write a Literary Analysis

The last stage of writing a literary essay is proofreading. We’ve noticed a dramatic trend in modern education: many students tend to ignore the editing stage and often don’t allocate enough time to this process. This drastic mistake usually leads to poor grades and overwhelming frustration for students. 

Seasoned academic writers understand that editing is the most significant stage in the whole writing process . You should dedicate enough time and use different methods to guarantee the impeccable quality of your final drafts. Let’s focus on the versatility of effective proofreading methods: combining some of these approaches would allow you to find the most typical errors, including typos, grammar mistakes, and flaws in the paper’s logic or structure. 

The first step of the revision process is rereading. You should reread your literary analyses several times ; the best solution would be to make breaks between iterations. There is one helpful hack that can make your revision more effective! Consider dedicating some rereadings to finding specific mistakes; such an approach can boost your attention by focusing on one particular issue. 

During the thorough revision, your best assistants are writing tools . Even the best academic writers are not ideal and need help perfecting their revision process. It would be smart to use apps like AHelp Spell Checker or Grammarly to spot errors and typos you’ve missed during manual checking. Both apps use color-coded suggestions, so you will be able to access each recommendation independently and decide if it is worth your attention or not. 

If you are not sure which word to use, check your text with our tool

The last step of your perfect revision is finding a beta reader . In the ideal world, your better reader should be an experienced academic writer or professional editor, but such perfection is not always possible. In any case, it is always better to have an alternative point of view, and even a revision from a friend or relative without any academic experience could make a difference. 

The Bottom Line

Writing a literary analysis may seem challenging at first glance, but you can complete this assignment quickly with the correct approach and perseverance. You need several things to succeed: a complete understanding of the assignment type and the writing process (you already have these with advice from our guide) and enough time for writing and editing. So, stop hesitating and start working on your assignment!

How do you start a literary analysis essay?

You should start your literary analysis with an introduction. An exciting introduction is the first step in beginning a literary analysis since it establishes the overall tone of the paper. Start by establishing the literature in question by naming the author, title, and, if applicable, the publication date. Use a provocative comment, question, or quote from the text to capture the interest of your readers. The last step in writing a practical introduction is to present your thesis, which should be brief but convey your essay’s central argument or interpretation.

What are the 5 steps to literary analysis?

The five steps to literary analysis are reading the literary piece and gathering information, developing the central thesis, writing an introduction and body chapters, composing a solid conclusion, and editing. Each step is significant and should not be skipped in order to create a decent literary essay.

What is the basic structure of a literary analysis essay?

The classic structure for a literary analysis college essay consists of an introduction, three to five body chapters, and a conclusion. We recommend adhering to this golden structure and avoiding any unnecessary deviations.

What are the three most important elements of a literary analysis essay?

Like other types of essays, analytical essays have an introduction, main body, and conclusion. However, their body paragraphs adhere more rigidly to the rules of logic, facts, and proof than those of other essays. We recommend sticking to this classical structure and changing it only when necessary.

What are the 4 types of literary analysis?

The four main types of literary analysis are:

  • Compare-and-contrast essays.
  • Trace analyses (papers focused on a specific entity or symbol in the book or novel).
  • Debate essays (essays focused on one particular problem and argumentation around it).
  • Hybrid types. 

Depending on the subtype of your analysis, you may require a slightly different approach.

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Chapter Four: Theory, Methodologies, Methods, and Evidence

Research Methods

You are viewing the first edition of this textbook. a second edition is available – please visit the latest edition for updated information..

This page discusses the following topics:

Research Goals

Research method types.

Before discussing research   methods , we need to distinguish them from  methodologies  and  research skills . Methodologies, linked to literary theories, are tools and lines of investigation: sets of practices and propositions about texts and the world. Researchers using Marxist literary criticism will adopt methodologies that look to material forces like labor, ownership, and technology to understand literature and its relationship to the world. They will also seek to understand authors not as inspired geniuses but as people whose lives and work are shaped by social forces.

Example: Critical Race Theory Methodologies

Critical Race Theory may use a variety of methodologies, including

  • Interest convergence: investigating whether marginalized groups only achieve progress when dominant groups benefit as well
  • Intersectional theory: investigating how multiple factors of advantage and disadvantage around race, gender, ethnicity, religion, etc. operate together in complex ways
  • Radical critique of the law: investigating how the law has historically been used to marginalize particular groups, such as black people, while recognizing that legal efforts are important to achieve emancipation and civil rights
  • Social constructivism: investigating how race is socially constructed (rather than biologically grounded)
  • Standpoint epistemology: investigating how knowledge relates to social position
  • Structural determinism: investigating how structures of thought and of organizations determine social outcomes

To identify appropriate methodologies, you will need to research your chosen theory and gather what methodologies are associated with it. For the most part, we can’t assume that there are “one size fits all” methodologies.

Research skills are about how you handle materials such as library search engines, citation management programs, special collections materials, and so on.

Research methods  are about where and how you get answers to your research questions. Are you conducting interviews? Visiting archives? Doing close readings? Reviewing scholarship? You will need to choose which methods are most appropriate to use in your research and you need to gain some knowledge about how to use these methods. In other words, you need to do some research into research methods!

Your choice of research method depends on the kind of questions you are asking. For example, if you want to understand how an author progressed through several drafts to arrive at a final manuscript, you may need to do archival research. If you want to understand why a particular literary work became a bestseller, you may need to do audience research. If you want to know why a contemporary author wrote a particular work, you may need to do interviews. Usually literary research involves a combination of methods such as  archival research ,  discourse analysis , and  qualitative research  methods.

Literary research methods tend to differ from research methods in the hard sciences (such as physics and chemistry). Science research must present results that are reproducible, while literary research rarely does (though it must still present evidence for its claims). Literary research often deals with questions of meaning, social conventions, representations of lived experience, and aesthetic effects; these are questions that reward dialogue and different perspectives rather than one great experiment that settles the issue. In literary research, we might get many valuable answers even though they are quite different from one another. Also in literary research, we usually have some room to speculate about answers, but our claims have to be plausible (believable) and our argument comprehensive (meaning we don’t overlook evidence that would alter our argument significantly if it were known).

A literary researcher might select the following:

Theory: Critical Race Theory

Methodology: Social Constructivism

Method: Scholarly

Skills: Search engines, citation management

Wendy Belcher, in  Writing Your Journal Article in 12 Weeks , identifies two main approaches to understanding literary works: looking at a text by itself (associated with New Criticism ) and looking at texts as they connect to society (associated with Cultural Studies ). The goal of New Criticism is to bring the reader further into the text. The goal of Cultural Studies is to bring the reader into the network of discourses that surround and pass through the text. Other approaches, such as Ecocriticism, relate literary texts to the Sciences (as well as to the Humanities).

The New Critics, starting in the 1940s,  focused on meaning within the text itself, using a method they called “ close reading .” The text itself becomes e vidence for a particular reading. Using this approach, you should summarize the literary work briefly and q uote particularly meaningful passages, being sure to introduce quotes and then interpret them (never let them stand alone). Make connections within the work; a sk  “why” and “how” the various parts of the text relate to each other.

Cultural Studies critics see all texts  as connected to society; the critic  therefore has to connect a text to at least one political or social issue. How and why does  the text reproduce particular knowledge systems (known as discourses) and how do these knowledge systems relate to issues of power within the society? Who speaks and when? Answering these questions helps your reader understand the text in context. Cultural contexts can include the treatment of gender (Feminist, Queer), class (Marxist), nationality, race, religion, or any other area of human society.

Other approaches, such as psychoanalytic literary criticism , look at literary texts to better understand human psychology. A psychoanalytic reading can focus on a character, the author, the reader, or on society in general. Ecocriticism  look at human understandings of nature in literary texts.

We select our research methods based on the kinds of things we want to know. For example, we may be studying the relationship between literature and society, between author and text, or the status of a work in the literary canon. We may want to know about a work’s form, genre, or thematics. We may want to know about the audience’s reading and reception, or about methods for teaching literature in schools.

Below are a few research methods and their descriptions. You may need to consult with your instructor about which ones are most appropriate for your project. The first list covers methods most students use in their work. The second list covers methods more commonly used by advanced researchers. Even if you will not be using methods from this second list in your research project, you may read about these research methods in the scholarship you find.

Most commonly used undergraduate research methods:

  • Scholarship Methods:  Studies the body of scholarship written about a particular author, literary work, historical period, literary movement, genre, theme, theory, or method.
  • Textual Analysis Methods:  Used for close readings of literary texts, these methods also rely on literary theory and background information to support the reading.
  • Biographical Methods:  Used to study the life of the author to better understand their work and times, these methods involve reading biographies and autobiographies about the author, and may also include research into private papers, correspondence, and interviews.
  • Discourse Analysis Methods:  Studies language patterns to reveal ideology and social relations of power. This research involves the study of institutions, social groups, and social movements to understand how people in various settings use language to represent the world to themselves and others. Literary works may present complex mixtures of discourses which the characters (and readers) have to navigate.
  • Creative Writing Methods:  A literary re-working of another literary text, creative writing research is used to better understand a literary work by investigating its language, formal structures, composition methods, themes, and so on. For instance, a creative research project may retell a story from a minor character’s perspective to reveal an alternative reading of events. To qualify as research, a creative research project is usually combined with a piece of theoretical writing that explains and justifies the work.

Methods used more often by advanced researchers:

  • Archival Methods: Usually involves trips to special collections where original papers are kept. In these archives are many unpublished materials such as diaries, letters, photographs, ledgers, and so on. These materials can offer us invaluable insight into the life of an author, the development of a literary work, or the society in which the author lived. There are at least three major archives of James Baldwin’s papers: The Smithsonian , Yale , and The New York Public Library . Descriptions of such materials are often available online, but the materials themselves are typically stored in boxes at the archive.
  • Computational Methods:  Used for statistical analysis of texts such as studies of the popularity and meaning of particular words in literature over time.
  • Ethnographic Methods:  Studies groups of people and their interactions with literary works, for instance in educational institutions, in reading groups (such as book clubs), and in fan networks. This approach may involve interviews and visits to places (including online communities) where people interact with literary works. Note: before you begin such work, you must have  Institutional Review Board (IRB)  approval “to protect the rights and welfare of human participants involved in research.”
  • Visual Methods:  Studies the visual qualities of literary works. Some literary works, such as illuminated manuscripts, children’s literature, and graphic novels, present a complex interplay of text and image. Even works without illustrations can be studied for their use of typography, layout, and other visual features.

Regardless of the method(s) you choose, you will need to learn how to apply them to your work and how to carry them out successfully. For example, you should know that many archives do not allow you to bring pens (you can use pencils) and you may not be allowed to bring bags into the archives. You will need to keep a record of which documents you consult and their location (box number, etc.) in the archives. If you are unsure how to use a particular method, please consult a book about it. [1] Also, ask for the advice of trained researchers such as your instructor or a research librarian.

  • What research method(s) will you be using for your paper? Why did you make this method selection over other methods? If you haven’t made a selection yet, which methods are you considering?
  • What specific methodological approaches are you most interested in exploring in relation to the chosen literary work?
  • What is your plan for researching your method(s) and its major approaches?
  • What was the most important lesson you learned from this page? What point was confusing or difficult to understand?

Write your answers in a webcourse discussion page.

literary analysis research essay

  • Introduction to Research Methods: A Practical Guide for Anyone Undertaking a Research Project  by Catherine, Dr. Dawson
  • Practical Research Methods: A User-Friendly Guide to Mastering Research Techniques and Projects  by Catherine Dawson
  • Qualitative Inquiry and Research Design: Choosing Among Five Approaches  by John W. Creswell  Cheryl N. Poth
  • Qualitative Research Evaluation Methods: Integrating Theory and Practice  by Michael Quinn Patton
  • Research Design: Qualitative, Quantitative, and Mixed Methods Approaches  by John W. Creswell  J. David Creswell
  • Research Methodology: A Step-by-Step Guide for Beginners  by Ranjit Kumar
  • Research Methodology: Methods and Techniques  by C.R. Kothari

Strategies for Conducting Literary Research Copyright © 2021 by Barry Mauer & John Venecek is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License , except where otherwise noted.

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literary analysis research essay

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  • Research Guides

Literature and Literary Research

  • Getting Started
  • Finding Books and Articles
  • Finding and Using Archival Sources
  • Finding and Using Reference Sources
  • Working Smarter

What's a good topic?

Choosing a topic can be one of the hardest parts of writing a paper. There are so many possible things to write about, and even if you have a general idea, it can be hard to know whether your topic is a good one. 

Writing a literature paper is different from writing many other kinds of papers. In literary analysis, it's not the ideas of other people that matter as much as your own interpretation of the texts you're reading. The bulk of your paper will be made up of your analysis of the text: the use of language, imagery, rhythm and repetition, word choice, the structure of the plot, or the representations of characters, emotions, events, or places. Your job is to analyze these elements of the text and through your analysis to assert an idea, or a claim, about the text, the author, or the context in which the text was written.

So what makes a good topic? A good topic is a theme that you think is represented in the text you're reading. But how do you get from a good topic to a good research question? 

What's a good research question?

Once you recognize a theme in a text or texts, your next step is to determine what you think the texts are saying about that theme. Read the text again, paying particular attention to your theme. What does your interpretation lead you think about the theme or idea? This is your claim, and your paper is structured around using analysis of the text or texts to support your claim. 

For example, you may be interested in looking at community or society in Thoreau's "Walden." You may have read the text and noticed a contradiction between Thoreau's claims of self-reliance and his interaction with society. You would then re-read the text, asking yourself as you read "What is the representation of society and Thoreau's relationship to it in 'Walden'?" After reading the text closely and paying special attention to these aspects of "Walden," you may be ready to make the claim that while Thoreau believed he was self-reliant, in truth he was still part of a network of people, and still part of his society and community. Or you may discover that your initial thought was wrong, and that Thoreau really did separate himself from his community in the way he wrote about. 

Types of Sources

There are a lot of different kinds of sources that you can use in your analysis. This guide will show you how to find and use these by type. 

Primary Sources  are the main pieces of evidence you will use to make your claim. The texts you are reading are a primary source; they are the most important primary source you're working with. Other examples are newspaper and magazine articles, diaries and letters, photographs, maps, and reviews written or created at the same time as your text. These sources can help you put your subject into context. 

Reference Sources  give you a broad overview of a person, place, event, or idea. They provide commonly known facts. Reference sources are not cited in your paper, but can be very useful for grounding you in your subject and ensuring that you have solid background information.  Literary biographies   are a form of reference material, and give you lots of information about authors, with an emphasis on how their lives are related to their writing. 

Secondary Sources  are also sometimes referred to as  criticism.  These are books and articles that scholars have written about a particular work of literature, movement, or author. Criticism can help you get a sense of the themes that other scholars read in a particular text. They may help inform your own understanding of a text, either because they reinforce your interpretation, or differ from it. Criticism is usually published in books or as articles in scholarly journals. 

So how do I use sources?

Primary sources are the evidence that we use to support our claims. They aren't the articles that other scholars and researchers have written, but original source material that we can use to better understand our topic. Primary sources in literary research include the text or texts that you're analyzing, but might also include additional material like letters written by the author, photographs, reviews written when the text was published, newspapers articles. Many different kinds of things can be used as primary sources, depending on your subject. 

For example, if you're studying Thoreau's relationships with others, you may want to find out more about Thoreau's role in his community by reading primary source material (letters that he wrote to friends and colleagues, newspaper articles about him or about his community) or by reading more about the context of his life in Massachusetts (the political and artistic movements of which he was part, the actual location of his cabin in relation to the town of Concord). These additional sources are used to support your interpretation of the text you're analyzing. 

You may want to use secondary sources to discuss other scholars' ideas and interpretations of the topic and text you're writing about, especially if you don't agree with their interpretations. Pay especially close attention to aspects of your topic that scholars don't agree about, and to different interpretations or ideas about a text. If there are major debates about the authors or texts you're studying, you'll want to reference them in the paper to help inform your reader and provide context to your own interpretation. 

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  • Last Updated: Feb 2, 2024 12:45 PM
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Full Guide to Writing an Analytical Essay

Full Guide to Writing an Analytical Essay

In academic writing, an analytical essay is considered one of the most difficult papers. Not only does it require an extensive understanding of the topic, but also a high level of critical thinking skills. In this article, we’ll break down what analytical essays are, their structure, and how to write an analytical essay for the first time.

What is an analytical essay?

Analytical writing focuses on demonstrating how exactly an author arrived at a given conclusion. It showcases the entire thought process used by the author to draw connections between different ideas.

As a form of analytical writing, analytical essays aim to break down an issue into different components and evaluate how these components work together. It allows the author to interpret and analyze a subject in a detailed and structured manner, using observations, evidence, and examples to support the main idea.

An analytical essay is a more complex type of essay writing. Because of this, it is regarded as a university-level assignment and can be hard to grasp at first. The analytical essay format is most often used as a tool to showcase research findings. It can be written on a variety of subjects, including literature, films, historical events, and scientific phenomena.

Analytical essay outline

Like with other essay types, an analytical essay outline has a standard structure that writers must follow. It consists of the following parts:

  • Introduction,
  • Body paragraphs,
  • Conclusion.

Each part of the analytical essay outline performs specific functions.

In the introduction , the writer should present the topic that they want to cover in the essay. This is also the part where the author states their thesis. It should be mentioned that an analytical thesis should represent a hypothesis that the writer wants to prove or the results of an analysis.

The body paragraphs of an analytical essay are dedicated to dissecting available evidence. Each analysis paragraph should focus on separate points and provide an examination of how each piece of evidence relates to the topic at hand.

At last, the conclusion of an analytical essay should briefly summarize the discussed points and present the results of the analysis. More often than not, the results reaffirm the analytical thesis, so the conclusion should also mention the original hypothesis.

How to write an analytical essay

Writing an analytical essay requires a structured approach to maintain its logic and analytical essay format. Let’s start with understanding how to start an analysis essay.

Step 1. Preparation and research

Before starting to write an analytical essay, it is essential to research its topic. Analytical writing in particular requires a thorough understanding of a topic and related aspects. Writers should prepare and study a list of sources before they can be ready to present a comprehensive analysis for others to read.

That’s why research is the first step. It helps you familiarize yourself with the topic, gain the required knowledge, and understand how to start an analysis essay. Conducting research also ensures that you comprehend how you plan to analyze a topic and what evidence you can bring up to confirm your conclusions.

Step 2. Introducing the topic

After conducting research, you can start your essay with an introduction.

The focal point of any introduction is the thesis statement. An analytical thesis must introduce the topic of your analysis, the parts of your analysis, and the order in which you will present your evidence. To formulate the thesis, you can ask the following questions:

  • What was the subject of my analysis?
  • What were the results of my analysis?
  • How did I come to these conclusions?

Apart from the thesis statement, the introduction should also include a brief background on the subject of your analysis to ensure that your audience has some understanding of the topic of your essay.

Step 3. Present your analysis

The next step in your writing is explaining how your analysis went in the main part of your paper. Each analysis paragraph should follow a set structure consisting of:

  • Topic sentence . The topic sentence introduces the main idea of an analysis paragraph. It should directly relate to your thesis statement.
  • Evidence . Evidence consists of summaries from your list of references and should support the main idea of your paragraph.
  • Analysis . After relaying the evidence, make sure to introduce a detailed analysis. Explain how exactly the evidence supports your main idea, why it is significant, and provide relevant interpretation.
  • Reinforcement . Every analysis paragraph should maintain logic, so it is important to reinforce your main topic by mentioning your thesis statement.

An average analytical essay consists of three body paragraphs. However, you should aim to represent your analysis fully, so the essay may end up longer.

Step 4. Conclude your essay

The last stage of our guide on how to write an analytical essay is creating a conclusion.

To write the conclusion of an analytical essay, you should restate your thesis in a new way to reinforce your main argument and remind the audience of your initial hypothesis. In this part, it is essential to summarize the key points of your analysis by highlighting how they collectively support your thesis.

Finally, you can end your essay with a closing thought that emphasizes the significance of your analysis and leaves a lasting impression on the reader.

Summary: Analytical essay

Among other types of academic texts, analytical essays aim to deepen the audience's understanding of the subject through careful analysis and logical argumentation. It requires thorough research and preparation as it gives a more profound insight into a topic.

Essay generator Aithor is created specifically to assist in academic writing. If you struggle with writing your analytical essay, use Aithor for swift and reliable advice on analytical writing.

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  • Open access
  • Published: 03 July 2024

The impact of evidence-based nursing leadership in healthcare settings: a mixed methods systematic review

  • Maritta Välimäki 1 , 2 ,
  • Shuang Hu 3 ,
  • Tella Lantta 1 ,
  • Kirsi Hipp 1 , 4 ,
  • Jaakko Varpula 1 ,
  • Jiarui Chen 3 ,
  • Gaoming Liu 5 ,
  • Yao Tang 3 ,
  • Wenjun Chen 3 &
  • Xianhong Li 3  

BMC Nursing volume  23 , Article number:  452 ( 2024 ) Cite this article

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Metrics details

The central component in impactful healthcare decisions is evidence. Understanding how nurse leaders use evidence in their own managerial decision making is still limited. This mixed methods systematic review aimed to examine how evidence is used to solve leadership problems and to describe the measured and perceived effects of evidence-based leadership on nurse leaders and their performance, organizational, and clinical outcomes.

We included articles using any type of research design. We referred nurses, nurse managers or other nursing staff working in a healthcare context when they attempt to influence the behavior of individuals or a group in an organization using an evidence-based approach. Seven databases were searched until 11 November 2021. JBI Critical Appraisal Checklist for Quasi-experimental studies, JBI Critical Appraisal Checklist for Case Series, Mixed Methods Appraisal Tool were used to evaluate the Risk of bias in quasi-experimental studies, case series, mixed methods studies, respectively. The JBI approach to mixed methods systematic reviews was followed, and a parallel-results convergent approach to synthesis and integration was adopted.

Thirty-one publications were eligible for the analysis: case series ( n  = 27), mixed methods studies ( n  = 3) and quasi-experimental studies ( n  = 1). All studies were included regardless of methodological quality. Leadership problems were related to the implementation of knowledge into practice, the quality of nursing care and the resource availability. Organizational data was used in 27 studies to understand leadership problems, scientific evidence from literature was sought in 26 studies, and stakeholders’ views were explored in 24 studies. Perceived and measured effects of evidence-based leadership focused on nurses’ performance, organizational outcomes, and clinical outcomes. Economic data were not available.

Conclusions

This is the first systematic review to examine how evidence is used to solve leadership problems and to describe its measured and perceived effects from different sites. Although a variety of perceptions and effects were identified on nurses’ performance as well as on organizational and clinical outcomes, available knowledge concerning evidence-based leadership is currently insufficient. Therefore, more high-quality research and clinical trial designs are still needed.

Trail registration

The study was registered (PROSPERO CRD42021259624).

Peer Review reports

Global health demands have set new roles for nurse leaders [ 1 ].Nurse leaders are referred to as nurses, nurse managers, or other nursing staff working in a healthcare context who attempt to influence the behavior of individuals or a group based on goals that are congruent with organizational goals [ 2 ]. They are seen as professionals “armed with data and evidence, and a commitment to mentorship and education”, and as a group in which “leaders innovate, transform, and achieve quality outcomes for patients, health care professionals, organizations, and communities” [ 3 ]. Effective leadership occurs when team members critically follow leaders and are motivated by a leader’s decisions based on the organization’s requests and targets [ 4 ]. On the other hand, problems caused by poor leadership may also occur, regarding staff relations, stress, sickness, or retention [ 5 ]. Therefore, leadership requires an understanding of different problems to be solved using synthesizing evidence from research, clinical expertise, and stakeholders’ preferences [ 6 , 7 ]. If based on evidence, leadership decisions, also referred as leadership decision making [ 8 ], could ensure adequate staffing [ 7 , 9 ] and to produce sufficient and cost-effective care [ 10 ]. However, nurse leaders still rely on their decision making on their personal [ 11 ] and professional experience [ 10 ] over research evidence, which can lead to deficiencies in the quality and safety of care delivery [ 12 , 13 , 14 ]. As all nurses should demonstrate leadership in their profession, their leadership competencies should be strengthened [ 15 ].

Evidence-informed decision-making, referred to as evidence appraisal and application, and evaluation of decisions [ 16 ], has been recognized as one of the core competencies for leaders [ 17 , 18 ]. The role of evidence in nurse leaders’ managerial decision making has been promoted by public authorities [ 19 , 20 , 21 ]. Evidence-based management, another concept related to evidence-based leadership, has been used as the potential to improve healthcare services [ 22 ]. It can guide nursing leaders, in developing working conditions, staff retention, implementation practices, strategic planning, patient care, and success of leadership [ 13 ]. Collins and Holton [ 23 ] in their systematic review and meta-analysis examined 83 studies regarding leadership development interventions. They found that leadership training can result in significant improvement in participants’ skills, especially in knowledge level, although the training effects varied across studies. Cummings et al. [ 24 ] reviewed 100 papers (93 studies) and concluded that participation in leadership interventions had a positive impact on the development of a variety of leadership styles. Clavijo-Chamorro et al. [ 25 ] in their review of 11 studies focused on leadership-related factors that facilitate evidence implementation: teamwork, organizational structures, and transformational leadership. The role of nurse managers was to facilitate evidence-based practices by transforming contexts to motivate the staff and move toward a shared vision of change.

As far as we are aware, however, only a few systematic reviews have focused on evidence-based leadership or related concepts in the healthcare context aiming to analyse how nurse leaders themselves uses evidence in the decision-making process. Young [ 26 ] targeted definitions and acceptance of evidence-based management (EBMgt) in healthcare while Hasanpoor et al. [ 22 ] identified facilitators and barriers, sources of evidence used, and the role of evidence in the process of decision making. Both these reviews concluded that EBMgt was of great importance but used limitedly in healthcare settings due to a lack of time, a lack of research management activities, and policy constraints. A review by Williams [ 27 ] showed that the usage of evidence to support management in decision making is marginal due to a shortage of relevant evidence. Fraser [ 28 ] in their review further indicated that the potential evidence-based knowledge is not used in decision making by leaders as effectively as it could be. Non-use of evidence occurs and leaders base their decisions mainly on single studies, real-world evidence, and experts’ opinions [ 29 ]. Systematic reviews and meta-analyses rarely provide evidence of management-related interventions [ 30 ]. Tate et al. [ 31 ] concluded based on their systematic review and meta-analysis that the ability of nurse leaders to use and critically appraise research evidence may influence the way policy is enacted and how resources and staff are used to meet certain objectives set by policy. This can further influence staff and workforce outcomes. It is therefore important that nurse leaders have the capacity and motivation to use the strongest evidence available to effect change and guide their decision making [ 27 ].

Despite of a growing body of evidence, we found only one review focusing on the impact of evidence-based knowledge. Geert et al. [ 32 ] reviewed literature from 2007 to 2016 to understand the elements of design, delivery, and evaluation of leadership development interventions that are the most reliably linked to outcomes at the level of the individual and the organization, and that are of most benefit to patients. The authors concluded that it is possible to improve individual-level outcomes among leaders, such as knowledge, motivation, skills, and behavior change using evidence-based approaches. Some of the most effective interventions included, for example, interactive workshops, coaching, action learning, and mentoring. However, these authors found limited research evidence describing how nurse leaders themselves use evidence to support their managerial decisions in nursing and what the outcomes are.

To fill the knowledge gap and compliment to existing knowledgebase, in this mixed methods review we aimed to (1) examine what leadership problems nurse leaders solve using an evidence-based approach and (2) how they use evidence to solve these problems. We also explored (3) the measured and (4) perceived effects of the evidence-based leadership approach in healthcare settings. Both qualitative and quantitative components of the effects of evidence-based leadership were examined to provide greater insights into the available literature [ 33 ]. Together with the evidence-based leadership approach, and its impact on nursing [ 34 , 35 ], this knowledge gained in this review can be used to inform clinical policy or organizational decisions [ 33 ]. The study is registered (PROSPERO CRD42021259624). The methods used in this review were specified in advance and documented in a priori in a published protocol [ 36 ]. Key terms of the review and the search terms are defined in Table  1 (population, intervention, comparison, outcomes, context, other).

In this review, we used a mixed methods approach [ 37 ]. A mixed methods systematic review was selected as this approach has the potential to produce direct relevance to policy makers and practitioners [ 38 ]. Johnson and Onwuegbuzie [ 39 ] have defined mixed methods research as “the class of research in which the researcher mixes or combines quantitative and qualitative research techniques, methods, approaches, concepts or language into a single study.” Therefore, we combined quantitative and narrative analysis to appraise and synthesize empirical evidence, and we held them as equally important in informing clinical policy or organizational decisions [ 34 ]. In this review, a comprehensive synthesis of quantitative and qualitative data was performed first and then discussed in discussion part (parallel-results convergent design) [ 40 ]. We hoped that different type of analysis approaches could complement each other and deeper picture of the topic in line with our research questions could be gained [ 34 ].

Inclusion and exclusion criteria

Inclusion and exclusion criteria of the study are described in Table  1 .

Search strategy

A three-step search strategy was utilized. First, an initial limited search with #MEDLINE was undertaken, followed by analysis of the words used in the title, abstract, and the article’s key index terms. Second, the search strategy, including identified keywords and index terms, was adapted for each included data base and a second search was undertaken on 11 November 2021. The full search strategy for each database is described in Additional file 1 . Third, the reference list of all studies included in the review were screened for additional studies. No year limits or language restrictions were used.

Information sources

The database search included the following: CINAHL (EBSCO), Cochrane Library (academic database for medicine and health science and nursing), Embase (Elsevier), PsycINFO (EBSCO), PubMed (MEDLINE), Scopus (Elsevier) and Web of Science (academic database across all scientific and technical disciplines, ranging from medicine and social sciences to arts and humanities). These databases were selected as they represent typical databases in health care context. Subject headings from each of the databases were included in the search strategies. Boolean operators ‘AND’ and ‘OR’ were used to combine the search terms. An information specialist from the University of Turku Library was consulted in the formation of the search strategies.

Study selection

All identified citations were collated and uploaded into Covidence software (Covidence systematic review software, Veritas Health Innovation, Melbourne, Australia www.covidence.org ), and duplicates were removed by the software. Titles and abstracts were screened and assessed against the inclusion criteria independently by two reviewers out of four, and any discrepancies were resolved by the third reviewer (MV, KH, TL, WC). Studies meeting the inclusion criteria were retrieved in full and archived in Covidence. Access to one full-text article was lacking: the authors for one study were contacted about the missing full text, but no full text was received. All remaining hits of the included studies were retrieved and assessed independently against the inclusion criteria by two independent reviewers of four (MV, KH, TL, WC). Studies that did not meet the inclusion criteria were excluded, and the reasons for exclusion were recorded in Covidence. Any disagreements that arose between the reviewers were resolved through discussions with XL.

Assessment of methodological quality

Eligible studies were critically appraised by two independent reviewers (YT, SH). Standardized critical appraisal instruments based on the study design were used. First, quasi-experimental studies were assessed using the JBI Critical Appraisal Checklist for Quasi-experimental studies [ 44 ]. Second, case series were assessed using the JBI Critical Appraisal Checklist for Case Series [ 45 ]. Third, mixed methods studies were appraised using the Mixed Methods Appraisal Tool [ 46 ].

To increase inter-reviewer reliability, the review agreement was calculated (SH) [ 47 ]. A kappa greater than 0.8 was considered to represent a high level of agreement (0–0.1). In our data, the agreement was 0.75. Discrepancies raised between two reviewers were resolved through discussion and modifications and confirmed by XL. As an outcome, studies that met the inclusion criteria were proceeded to critical appraisal and assessed as suitable for inclusion in the review. The scores for each item and overall critical appraisal scores were presented.

Data extraction

For data extraction, specific tables were created. First, study characteristics (author(s), year, country, design, number of participants, setting) were extracted by two authors independently (JC, MV) and reviewed by TL. Second, descriptions of the interventions were extracted by two reviewers (JV, JC) using the structure of the TIDIeR (Template for Intervention Description and Replication) checklist (brief name, the goal of the intervention, material and procedure, models of delivery and location, dose, modification, adherence and fidelity) [ 48 ]. The extractions were confirmed (MV).

Third, due to a lack of effectiveness data and a wide heterogeneity between study designs and presentation of outcomes, no attempt was made to pool the quantitative data statistically; the findings of the quantitative data were presented in narrative form only [ 44 ]. The separate data extraction tables for each research question were designed specifically for this study. For both qualitative (and a qualitative component of mixed-method studies) and quantitative studies, the data were extracted and tabulated into text format according to preplanned research questions [ 36 ]. To test the quality of the tables and the data extraction process, three authors independently extracted the data from the first five studies (in alphabetical order). After that, the authors came together to share and determine whether their approaches of the data extraction were consistent with each other’s output and whether the content of each table was in line with research question. No reason was found to modify the data extraction tables or planned process. After a consensus of the data extraction process was reached, the data were extracted in pairs by independent reviewers (WC, TY, SH, GL). Any disagreements that arose between the reviewers were resolved through discussion and with a third reviewer (MV).

Data analysis

We were not able to conduct a meta-analysis due to a lack of effectiveness data based on clinical trials. Instead, we used inductive thematic analysis with constant comparison to answer the research question [ 46 , 49 ] using tabulated primary data from qualitative and quantitative studies as reported by the original authors in narrative form only [ 47 ]. In addition, the qualitizing process was used to transform quantitative data to qualitative data; this helped us to convert the whole data into themes and categories. After that we used the thematic analysis for the narrative data as follows. First, the text was carefully read, line by line, to reveal topics answering each specific review question (MV). Second, the data coding was conducted, and the themes in the data were formed by data categorization. The process of deriving the themes was inductive based on constant comparison [ 49 ]. The results of thematic analysis and data categorization was first described in narrative format and then the total number of studies was calculated where the specific category was identified (%).

Stakeholder involvement

The method of reporting stakeholders’ involvement follows the key components by [ 50 ]: (1) people involved, (2) geographical location, (3) how people were recruited, (4) format of involvement, (5) amount of involvement, (6) ethical approval, (7) financial compensation, and (8) methods for reporting involvement.

In our review, stakeholder involvement targeted nurses and nurse leader in China. Nurse Directors of two hospitals recommended potential participants who received a personal invitation letter from researchers to participate in a discussion meeting. Stakeholders’ participation was based on their own free will. Due to COVID-19, one online meeting (1 h) was organized (25 May 2022). Eleven participants joined the meeting. Ethical approval was not applied and no financial compensation was offered. At the end of the meeting, experiences of stakeholders’ involvement were explored.

The meeting started with an introductory presentation with power points. The rationale, methods, and preliminary review results were shared with the participants [ 51 ].The meeting continued with general questions for the participants: (1) Are you aware of the concepts of evidence-based practice or evidence-based leadership?; (2) How important is it to use evidence to support decisions among nurse leaders?; (3) How is the evidence-based approach used in hospital settings?; and (4) What type of evidence is currently used to support nurse leaders’ decision making (e.g. scientific literature, organizational data, stakeholder views)?

Two people took notes on the course and content of the conversation. The notes were later transcripted in verbatim, and the key points of the discussions were summarised. Although answers offered by the stakeholders were very short, the information was useful to validate the preliminary content of the results, add the rigorousness of the review, and obtain additional perspectives. A recommendation of the stakeholders was combined in the Discussion part of this review increasing the applicability of the review in the real world [ 50 ]. At the end of the discussion, the value of stakeholders’ involvement was asked. Participants shared that the experience of participating was unique and the topic of discussion was challenging. Two authors of the review group further represented stakeholders by working together with the research team throughout the review study.

Search results

From seven different electronic databases, 6053 citations were identified as being potentially relevant to the review. Then, 3133 duplicates were removed by an automation tool (Covidence: www.covidence.org ), and one was removed manually. The titles and abstracts of 3040 of citations were reviewed, and a total of 110 full texts were included (one extra citation was found on the reference list but later excluded). Based on the eligibility criteria, 31 studies (32 hits) were critically appraised and deemed suitable for inclusion in the review. The search results and selection process are presented in the PRISMA [ 52 ] flow diagram Fig.  1 . The full list of references for included studies can be find in Additional file 2 . To avoid confusion between articles of the reference list and studies included in the analysis, the studies included in the review are referred inside the article using the reference number of each study (e.g. ref 1, ref 2).

figure 1

Search results and study selection and inclusion process [ 52 ]

Characteristics of included studies

The studies had multiple purposes, aiming to develop practice, implement a new approach, improve quality, or to develop a model. The 31 studies (across 32 hits) were case series studies ( n  = 27), mixed methods studies ( n  = 3) and a quasi-experimental study ( n  = 1). All studies were published between the years 2004 and 2021. The highest number of papers was published in year 2020.

Table  2 describes the characteristics of included studies and Additional file 3 offers a narrative description of the studies.

Methodological quality assessment

Quasi-experimental studies.

We had one quasi-experimental study (ref 31). All questions in the critical appraisal tool were applicable. The total score of the study was 8 (out of a possible 9). Only one response of the tool was ‘no’ because no control group was used in the study (see Additional file 4 for the critical appraisal of included studies).

Case series studies . A case series study is typically defined as a collection of subjects with common characteristics. The studies do not include a comparison group and are often based on prevalent cases and on a sample of convenience [ 53 ]. Munn et al. [ 45 ] further claim that case series are best described as observational studies, lacking experimental and randomized characteristics, being descriptive studies, without a control or comparator group. Out of 27 case series studies included in our review, the critical appraisal scores varied from 1 to 9. Five references were conference abstracts with empirical study results, which were scored from 1 to 3. Full reports of these studies were searched in electronic databases but not found. Critical appraisal scores for the remaining 22 studies ranged from 1 to 9 out of a possible score of 10. One question (Q3) was not applicable to 13 studies: “Were valid methods used for identification of the condition for all participants included in the case series?” Only two studies had clearly reported the demographic of the participants in the study (Q6). Twenty studies met Criteria 8 (“Were the outcomes or follow-up results of cases clearly reported?”) and 18 studies met Criteria 7 (“Q7: Was there clear reporting of clinical information of the participants?”) (see Additional file 4 for the critical appraisal of included studies).

Mixed-methods studies

Mixed-methods studies involve a combination of qualitative and quantitative methods. This is a common design and includes convergent design, sequential explanatory design, and sequential exploratory design [ 46 ]. There were three mixed-methods studies. The critical appraisal scores for the three studies ranged from 60 to 100% out of a possible 100%. Two studies met all the criteria, while one study fulfilled 60% of the scored criteria due to a lack of information to understand the relevance of the sampling strategy well enough to address the research question (Q4.1) or to determine whether the risk of nonresponse bias was low (Q4.4) (see Additional file 4 for the critical appraisal of included studies).

Intervention or program components

The intervention of program components were categorized and described using the TiDier checklist: name and goal, theory or background, material, procedure, provider, models of delivery, location, dose, modification, and adherence and fidelity [ 48 ]. A description of intervention in each study is described in Additional file 5 and a narrative description in Additional file 6 .

Leadership problems

In line with the inclusion criteria, data for the leadership problems were categorized in all 31 included studies (see Additional file 7 for leadership problems). Three types of leadership problems were identified: implementation of knowledge into practice, the quality of clinical care, and resources in nursing care. A narrative summary of the results is reported below.

Implementing knowledge into practice

Eleven studies (35%) aimed to solve leadership problems related to implementation of knowledge into practice. Studies showed how to support nurses in evidence-based implementation (EBP) (ref 3, ref 5), how to engage nurses in using evidence in practice (ref 4), how to convey the importance of EBP (ref 22) or how to change practice (ref 4). Other problems were how to facilitate nurses to use guideline recommendations (ref 7) and how nurses can make evidence-informed decisions (ref 8). General concerns also included the linkage between theory and practice (ref 1) as well as how to implement the EBP model in practice (ref 6). In addition, studies were motivated by the need for revisions or updates of protocols to improve clinical practice (ref 10) as well as the need to standardize nursing activities (ref 11, ref 14).

The quality of the care

Thirteen (42%) focused on solving problems related to the quality of clinical care. In these studies, a high number of catheter infections led a lack of achievement of organizational goals (ref 2, ref 9). A need to reduce patient symptoms in stem cell transplant patients undergoing high-dose chemotherapy (ref 24) was also one of the problems to be solved. In addition, the projects focused on how to prevent pressure ulcers (ref 26, ref 29), how to enhance the quality of cancer treatment (ref 25) and how to reduce the need for invasive constipation treatment (ref 30). Concerns about patient safety (ref 15), high fall rates (ref 16, ref 19), dissatisfaction of patients (ref 16, ref 18) and nurses (ref 16, ref 30) were also problems that had initiated the projects. Studies addressed concerns about how to promote good contingency care in residential aged care homes (ref 20) and about how to increase recognition of human trafficking problems in healthcare (ref 21).

Resources in nursing care

Nurse leaders identified problems in their resources, especially in staffing problems. These problems were identified in seven studies (23%), which involved concerns about how to prevent nurses from leaving the job (ref 31), how to ensure appropriate recruitment, staffing and retaining of nurses (ref 13) and how to decrease nurses’ burden and time spent on nursing activities (ref 12). Leadership turnover was also reported as a source of dissatisfaction (ref 17); studies addressed a lack of structured transition and training programs, which led to turnover (ref 23), as well as how to improve intershift handoff among nurses (ref 28). Optimal design for new hospitals was also examined (ref 27).

Main features of evidence-based leadership

Out of 31 studies, 17 (55%) included all four domains of an evidence-based leadership approach, and four studies (13%) included evidence of critical appraisal of the results (see Additional file 8 for the main features of evidence-based Leadership) (ref 11, ref 14, ref 23, ref 27).

Organizational evidence

Twenty-seven studies (87%) reported how organizational evidence was collected and used to solve leadership problems (ref 2). Retrospective chart reviews (ref 5), a review of the extent of specific incidents (ref 19), and chart auditing (ref 7, ref 25) were conducted. A gap between guideline recommendations and actual care was identified using organizational data (ref 7) while the percentage of nurses’ working time spent on patient care was analyzed using an electronic charting system (ref 12). Internal data (ref 22), institutional data, and programming metrics were also analyzed to understand the development of the nurse workforce (ref 13).

Surveys (ref 3, ref 25), interviews (ref 3, ref 25) and group reviews (ref 18) were used to better understand the leadership problem to be solved. Employee opinion surveys on leadership (ref 17), a nurse satisfaction survey (ref 30) and a variety of reporting templates were used for the data collection (ref 28) reported. Sometimes, leadership problems were identified by evidence facilitators or a PI’s team who worked with staff members (ref 15, ref 17). Problems in clinical practice were also identified by the Nursing Professional Council (ref 14), managers (ref 26) or nurses themselves (ref 24). Current practices were reviewed (ref 29) and a gap analysis was conducted (ref 4, ref 16, ref 23) together with SWOT analysis (ref 16). In addition, hospital mission and vision statements, research culture established and the proportion of nursing alumni with formal EBP training were analyzed (ref 5). On the other hand, it was stated that no systematic hospital-specific sources of data regarding job satisfaction or organizational commitment were used (ref 31). In addition, statements of organizational analysis were used on a general level only (ref 1).

Scientific evidence identified

Twenty-six studies (84%) reported the use of scientific evidence in their evidence-based leadership processes. A literature search was conducted (ref 21) and questions, PICO, and keywords were identified (ref 4) in collaboration with a librarian. Electronic databases, including PubMed (ref 14, ref 31), Cochrane, and EMBASE (ref 31) were searched. Galiano (ref 6) used Wiley Online Library, Elsevier, CINAHL, Health Source: Nursing/Academic Edition, PubMed, and the Cochrane Library while Hoke (ref 11) conducted an electronic search using CINAHL and PubMed to retrieve articles.

Identified journals were reviewed manually (ref 31). The findings were summarized using ‘elevator speech’ (ref 4). In a study by Gifford et al. (ref 9) evidence facilitators worked with participants to access, appraise, and adapt the research evidence to the organizational context. Ostaszkiewicz (ref 20) conducted a scoping review of literature and identified and reviewed frameworks and policy documents about the topic and the quality standards. Further, a team of nursing administrators, directors, staff nurses, and a patient representative reviewed the literature and made recommendations for practice changes.

Clinical practice guidelines were also used to offer scientific evidence (ref 7, ref 19). Evidence was further retrieved from a combination of nursing policies, guidelines, journal articles, and textbooks (ref 12) as well as from published guidelines and literature (ref 13). Internal evidence, professional practice knowledge, relevant theories and models were synthesized (ref 24) while other study (ref 25) reviewed individual studies, synthesized with systematic reviews or clinical practice guidelines. The team reviewed the research evidence (ref 3, ref 15) or conducted a literature review (ref 22, ref 28, ref 29), a literature search (ref 27), a systematic review (ref 23), a review of the literature (ref 30) or ‘the scholarly literature was reviewed’ (ref 18). In addition, ‘an extensive literature review of evidence-based best practices was carried out’ (ref 10). However, detailed description how the review was conducted was lacking.

Views of stakeholders

A total of 24 studies (77%) reported methods for how the views of stakeholders, i.e., professionals or experts, were considered. Support to run this study was received from nursing leadership and multidisciplinary teams (ref 29). Experts and stakeholders joined the study team in some cases (ref 25, ref 30), and in other studies, their opinions were sought to facilitate project success (ref 3). Sometimes a steering committee was formed by a Chief Nursing Officer and Clinical Practice Specialists (ref 2). More specifically, stakeholders’ views were considered using interviews, workshops and follow-up teleconferences (ref 7). The literature review was discussed with colleagues (ref 11), and feedback and support from physicians as well as the consensus of staff were sought (ref 16).

A summary of the project findings and suggestions for the studies were discussed at 90-minute weekly meetings by 11 charge nurses. Nurse executive directors were consulted over a 10-week period (ref 31). An implementation team (nurse, dietician, physiotherapist, occupational therapist) was formed to support the implementation of evidence-based prevention measures (ref 26). Stakeholders volunteered to join in the pilot implementation (ref 28) or a stakeholder team met to determine the best strategy for change management, shortcomings in evidence-based criteria were discussed, and strategies to address those areas were planned (ref 5). Nursing leaders, staff members (ref 22), ‘process owners (ref 18) and program team members (ref 18, ref 19, ref 24) met regularly to discuss the problems. Critical input was sought from clinical educators, physicians, nutritionists, pharmacists, and nurse managers (ref 24). The unit director and senior nursing staff reviewed the contents of the product, and the final version of clinical pathways were reviewed and approved by the Quality Control Commission of the Nursing Department (ref 12). In addition, two co-design workshops with 18 residential aged care stakeholders were organized to explore their perspectives about factors to include in a model prototype (ref 20). Further, an agreement of stakeholders in implementing continuous quality services within an open relationship was conducted (ref 1).

Critical appraisal

In five studies (16%), a critical appraisal targeting the literature search was carried out. The appraisals were conducted by interns and teams who critiqued the evidence (ref 4). In Hoke’s study, four areas that had emerged in the literature were critically reviewed (ref 11). Other methods were to ‘critically appraise the search results’ (ref 14). Journal club team meetings (ref 23) were organized to grade the level and quality of evidence and the team ‘critically appraised relevant evidence’ (ref 27). On the other hand, the studies lacked details of how the appraisals were done in each study.

The perceived effects of evidence-based leadership

Perceived effects of evidence-based leadership on nurses’ performance.

Eleven studies (35%) described perceived effects of evidence-based leadership on nurses’ performance (see Additional file 9 for perceived effects of evidence-based leadership), which were categorized in four groups: awareness and knowledge, competence, ability to understand patients’ needs, and engagement. First, regarding ‘awareness and knowledge’, different projects provided nurses with new learning opportunities (ref 3). Staff’s knowledge (ref 20, ref 28), skills, and education levels improved (ref 20), as did nurses’ knowledge comprehension (ref 21). Second, interventions and approaches focusing on management and leadership positively influenced participants’ competence level to improve the quality of services. Their confidence level (ref 1) and motivation to change practice increased, self-esteem improved, and they were more positive and enthusiastic in their work (ref 22). Third, some nurses were relieved that they had learned to better handle patients’ needs (ref 25). For example, a systematic work approach increased nurses’ awareness of the patients who were at risk of developing health problems (ref 26). And last, nurse leaders were more engaged with staff, encouraging them to adopt the new practices and recognizing their efforts to change (ref 8).

Perceived effects on organizational outcomes

Nine studies (29%) described the perceived effects of evidence-based leadership on organizational outcomes (see Additional file 9 for perceived effects of evidence-based leadership). These were categorized into three groups: use of resources, staff commitment, and team effort. First, more appropriate use of resources was reported (ref 15, ref 20), and working time was more efficiently used (ref 16). In generally, a structured approach made implementing change more manageable (ref 1). On the other hand, in the beginning of the change process, the feedback from nurses was unfavorable, and they experienced discomfort in the new work style (ref 29). New approaches were also perceived as time consuming (ref 3). Second, nurse leaders believed that fewer nursing staff than expected left the organization over the course of the study (ref 31). Third, the project helped staff in their efforts to make changes, and it validated the importance of working as a team (ref 7). Collaboration and support between the nurses increased (ref 26). On the other hand, new work style caused challenges in teamwork (ref 3).

Perceived effects on clinical outcomes

Five studies (16%) reported the perceived effects of evidence-based leadership on clinical outcomes (see Additional file 9 for perceived effects of evidence-based leadership), which were categorized in two groups: general patient outcomes and specific clinical outcomes. First, in general, the project assisted in connecting the guideline recommendations and patient outcomes (ref 7). The project was good for the patients in general, and especially to improve patient safety (ref 16). On the other hand, some nurses thought that the new working style did not work at all for patients (ref 28). Second, the new approach used assisted in optimizing patients’ clinical problems and person-centered care (ref 20). Bowel management, for example, received very good feedback (ref 30).

The measured effects of evidence-based leadership

The measured effects on nurses’ performance.

Data were obtained from 20 studies (65%) (see Additional file 10 for measured effects of evidence-based leadership) and categorized nurse performance outcomes for three groups: awareness and knowledge, engagement, and satisfaction. First, six studies (19%) measured the awareness and knowledge levels of participants. Internship for staff nurses was beneficial to help participants to understand the process for using evidence-based practice and to grow professionally, to stimulate for innovative thinking, to give knowledge needed to use evidence-based practice to answer clinical questions, and to make possible to complete an evidence-based practice project (ref 3). Regarding implementation program of evidence-based practice, those with formal EBP training showed an improvement in knowledge, attitude, confidence, awareness and application after intervention (ref 3, ref 11, ref 20, ref 23, ref 25). On the contrary, in other study, attitude towards EBP remained stable ( p  = 0.543). and those who applied EBP decreased although no significant differences over the years ( p  = 0.879) (ref 6).

Second, 10 studies (35%) described nurses’ engagement to new practices (ref 5, ref 6, ref 7, ref 10, ref 16, ref 17, ref 18, ref 21, ref 25, ref 27). 9 studies (29%) studies reported that there was an improvement of compliance level of participants (ref 6, ref 7, ref 10, ref 16, ref 17, ref 18, ref 21, ref 25, ref 27). On the contrary, in DeLeskey’s (ref 5) study, although improvement was found in post-operative nausea and vomiting’s (PONV) risk factors documented’ (2.5–63%), and ’risk factors communicated among anaesthesia and surgical staff’ (0–62%), the improvement did not achieve the goal. The reason was a limited improvement was analysed. It was noted that only those patients who had been seen by the pre-admission testing nurse had risk assessments completed. Appropriate treatment/prophylaxis increased from 69 to 77%, and from 30 to 49%; routine assessment for PONV/rescue treatment 97% and 100% was both at 100% following the project. The results were discussed with staff but further reasons for a lack of engagement in nursing care was not reported.

And third, six studies (19%) reported nurses’ satisfaction with project outcomes. The study results showed that using evidence in managerial decisions improved nurses’ satisfaction and attitudes toward their organization ( P  < 0.05) (ref 31). Nurses’ overall job satisfaction improved as well (ref 17). Nurses’ satisfaction with usability of the electronic charting system significantly improved after introduction of the intervention (ref 12). In handoff project in seven hospitals, improvement was reported in all satisfaction indicators used in the study although improvement level varied in different units (ref 28). In addition, positive changes were reported in nurses’ ability to autonomously perform their job (“How satisfied are you with the tools and resources available for you treat and prevent patient constipation?” (54%, n  = 17 vs. 92%, n  = 35, p  < 0.001) (ref 30).

The measured effects on organizational outcomes

Thirteen studies (42%) described the effects of a project on organizational outcomes (see Additional file 10 for measured effects of evidence-based leadership), which were categorized in two groups: staff compliance, and changes in practices. First, studies reported improved organizational outcomes due to staff better compliance in care (ref 4, ref 13, ref 17, ref 23, ref 27, ref 31). Second, changes in organization practices were also described (ref 11) like changes in patient documentation (ref 12, ref 21). Van Orne (ref 30) found a statistically significant reduction in the average rate of invasive medication administration between pre-intervention and post-intervention ( p  = 0.01). Salvador (ref 24) also reported an improvement in a proactive approach to mucositis prevention with an evidence-based oral care guide. On the contrary, concerns were also raised such as not enough time for new bedside report (ref 16) or a lack of improvement of assessment of diabetic ulcer (ref 8).

The measured effects on clinical outcomes

A variety of improvements in clinical outcomes were reported (see Additional file 10 for measured effects of evidence-based leadership): improvement in patient clinical status and satisfaction level. First, a variety of improvement in patient clinical status was reported. improvement in Incidence of CAUTI decreased 27.8% between 2015 and 2019 (ref 2) while a patient-centered quality improvement project reduced CAUTI rates to 0 (ref 10). A significant decrease in transmission rate of MRSA transmission was also reported (ref 27) and in other study incidences of CLABSIs dropped following of CHG bathing (ref 14). Further, it was possible to decrease patient nausea from 18 to 5% and vomiting to 0% (ref 5) while the percentage of patients who left the hospital without being seen was below 2% after the project (ref 17). In addition, a significant reduction in the prevalence of pressure ulcers was found (ref 26, ref 29) and a significant reduction of mucositis severity/distress was achieved (ref 24). Patient falls rate decreased (ref 15, ref 16, ref 19, ref 27).

Second, patient satisfaction level after project implementation improved (ref 28). The scale assessing healthcare providers by consumers showed improvement, but the changes were not statistically significant. Improvement in an emergency department leadership model and in methods of communication with patients improved patient satisfaction scores by 600% (ref 17). In addition, new evidence-based unit improved patient experiences about the unit although not all items improved significantly (ref 18).

Stakeholder involvement in the mixed-method review

To ensure stakeholders’ involvement in the review, the real-world relevance of our research [ 53 ], achieve a higher level of meaning in our review results, and gain new perspectives on our preliminary findings [ 50 ], a meeting with 11 stakeholders was organized. First, we asked if participants were aware of the concepts of evidence-based practice or evidence-based leadership. Responses revealed that participants were familiar with the concept of evidence-based practice, but the topic of evidence-based leadership was totally new. Examples of nurses and nurse leaders’ responses are as follows: “I have heard a concept of evidence-based practice but never a concept of evidence-based leadership.” Another participant described: “I have heard it [evidence-based leadership] but I do not understand what it means.”

Second, as stakeholder involvement is beneficial to the relevance and impact of health research [ 54 ], we asked how important evidence is to them in supporting decisions in health care services. One participant described as follows: “Using evidence in decisions is crucial to the wards and also to the entire hospital.” Third, we asked how the evidence-based approach is used in hospital settings. Participants expressed that literature is commonly used to solve clinical problems in patient care but not to solve leadership problems. “In [patient] medication and care, clinical guidelines are regularly used. However, I am aware only a few cases where evidence has been sought to solve leadership problems.”

And last, we asked what type of evidence is currently used to support nurse leaders’ decision making (e.g. scientific literature, organizational data, stakeholder views)? The participants were aware that different types of information were collected in their organization on a daily basis (e.g. patient satisfaction surveys). However, the information was seldom used to support decision making because nurse leaders did not know how to access this information. Even so, the participants agreed that the use of evidence from different sources was important in approaching any leadership or managerial problems in the organization. Participants also suggested that all nurse leaders should receive systematic training related to the topic; this could support the daily use of the evidence-based approach.

To our knowledge, this article represents the first mixed-methods systematic review to examine leadership problems, how evidence is used to solve these problems and what the perceived and measured effects of evidence-based leadership are on nurse leaders and their performance, organizational, and clinical outcomes. This review has two key findings. First, the available research data suggests that evidence-based leadership has potential in the healthcare context, not only to improve knowledge and skills among nurses, but also to improve organizational outcomes and the quality of patient care. Second, remarkably little published research was found to explore the effects of evidence-based leadership with an efficient trial design. We validated the preliminary results with nurse stakeholders, and confirmed that nursing staff, especially nurse leaders, were not familiar with the concept of evidence-based leadership, nor were they used to implementing evidence into their leadership decisions. Our data was based on many databases, and we screened a large number of studies. We also checked existing registers and databases and found no registered or ongoing similar reviews being conducted. Therefore, our results may not change in the near future.

We found that after identifying the leadership problems, 26 (84%) studies out of 31 used organizational data, 25 (81%) studies used scientific evidence from the literature, and 21 (68%) studies considered the views of stakeholders in attempting to understand specific leadership problems more deeply. However, only four studies critically appraised any of these findings. Considering previous critical statements of nurse leaders’ use of evidence in their decision making [ 14 , 30 , 31 , 34 , 55 ], our results are still quite promising.

Our results support a previous systematic review by Geert et al. [ 32 ], which concluded that it is possible to improve leaders’ individual-level outcomes, such as knowledge, motivation, skills, and behavior change using evidence-based approaches. Collins and Holton [ 23 ] particularly found that leadership training resulted in significant knowledge and skill improvements, although the effects varied widely across studies. In our study, evidence-based leadership was seen to enable changes in clinical practice, especially in patient care. On the other hand, we understand that not all efforts to changes were successful [ 56 , 57 , 58 ]. An evidence-based approach causes negative attitudes and feelings. Negative emotions in participants have also been reported due to changes, such as discomfort with a new working style [ 59 ]. Another study reported inconvenience in using a new intervention and its potential risks for patient confidentiality. Sometimes making changes is more time consuming than continuing with current practice [ 60 ]. These findings may partially explain why new interventions or program do not always fully achieve their goals. On the other hand, Dubose et al. [ 61 ] state that, if prepared with knowledge of resistance, nurse leaders could minimize the potential negative consequences and capitalize on a powerful impact of change adaptation.

We found that only six studies used a specific model or theory to understand the mechanism of change that could guide leadership practices. Participants’ reactions to new approaches may be an important factor in predicting how a new intervention will be implemented into clinical practice. Therefore, stronger effort should be put to better understanding the use of evidence, how participants’ reactions and emotions or practice changes could be predicted or supported using appropriate models or theories, and how using these models are linked with leadership outcomes. In this task, nurse leaders have an important role. At the same time, more responsibilities in developing health services have been put on the shoulders of nurse leaders who may already be suffering under pressure and increased burden at work. Working in a leadership position may also lead to role conflict. A study by Lalleman et al. [ 62 ] found that nurses were used to helping other people, often in ad hoc situations. The helping attitude of nurses combined with structured managerial role may cause dilemmas, which may lead to stress. Many nurse leaders opt to leave their positions less than 5 years [ 63 ].To better fulfill the requirements of health services in the future, the role of nurse leaders in evidence-based leadership needs to be developed further to avoid ethical and practical dilemmas in their leadership practices.

It is worth noting that the perceived and measured effects did not offer strong support to each other but rather opened a new venue to understand the evidence-based leadership. Specifically, the perceived effects did not support to measured effects (competence, ability to understand patients’ needs, use of resources, team effort, and specific clinical outcomes) while the measured effects could not support to perceived effects (nurse’s performance satisfaction, changes in practices, and clinical outcomes satisfaction). These findings may indicate that different outcomes appear if the effects of evidence-based leadership are looked at using different methodological approach. Future study is encouraged using well-designed study method including mixed-method study to examine the consistency between perceived and measured effects of evidence-based leadership in health care.

There is a potential in nursing to support change by demonstrating conceptual and operational commitment to research-based practices [ 64 ]. Nurse leaders are well positioned to influence and lead professional governance, quality improvement, service transformation, change and shared governance [ 65 ]. In this task, evidence-based leadership could be a key in solving deficiencies in the quality, safety of care [ 14 ] and inefficiencies in healthcare delivery [ 12 , 13 ]. As WHO has revealed, there are about 28 million nurses worldwide, and the demand of nurses will put nurse resources into the specific spotlight [ 1 ]. Indeed, evidence could be used to find solutions for how to solve economic deficits or other problems using leadership skills. This is important as, when nurses are able to show leadership and control in their own work, they are less likely to leave their jobs [ 66 ]. On the other hand, based on our discussions with stakeholders, nurse leaders are not used to using evidence in their own work. Further, evidence-based leadership is not possible if nurse leaders do not have access to a relevant, robust body of evidence, adequate funding, resources, and organizational support, and evidence-informed decision making may only offer short-term solutions [ 55 ]. We still believe that implementing evidence-based strategies into the work of nurse leaders may create opportunities to protect this critical workforce from burnout or leaving the field [ 67 ]. However, the role of the evidence-based approach for nurse leaders in solving these problems is still a key question.

Limitations

This study aimed to use a broad search strategy to ensure a comprehensive review but, nevertheless, limitations exist: we may have missed studies not included in the major international databases. To keep search results manageable, we did not use specific databases to systematically search grey literature although it is a rich source of evidence used in systematic reviews and meta-analysis [ 68 ]. We still included published conference abstract/proceedings, which appeared in our scientific databases. It has been stated that conference abstracts and proceedings with empirical study results make up a great part of studies cited in systematic reviews [ 69 ]. At the same time, a limited space reserved for published conference publications can lead to methodological issues reducing the validity of the review results [ 68 ]. We also found that the great number of studies were carried out in western countries, restricting the generalizability of the results outside of English language countries. The study interventions and outcomes were too different across studies to be meaningfully pooled using statistical methods. Thus, our narrative synthesis could hypothetically be biased. To increase transparency of the data and all decisions made, the data, its categorization and conclusions are based on original studies and presented in separate tables and can be found in Additional files. Regarding a methodological approach [ 34 ], we used a mixed methods systematic review, with the core intention of combining quantitative and qualitative data from primary studies. The aim was to create a breadth and depth of understanding that could confirm to or dispute evidence and ultimately answer the review question posed [ 34 , 70 ]. Although the method is gaining traction due to its usefulness and practicality, guidance in combining quantitative and qualitative data in mixed methods systematic reviews is still limited at the theoretical stage [ 40 ]. As an outcome, it could be argued that other methodologies, for example, an integrative review, could have been used in our review to combine diverse methodologies [ 71 ]. We still believe that the results of this mixed method review may have an added value when compared with previous systematic reviews concerning leadership and an evidence-based approach.

Our mixed methods review fills the gap regarding how nurse leaders themselves use evidence to guide their leadership role and what the measured and perceived impact of evidence-based leadership is in nursing. Although the scarcity of controlled studies on this topic is concerning, the available research data suggest that evidence-based leadership intervention can improve nurse performance, organizational outcomes, and patient outcomes. Leadership problems are also well recognized in healthcare settings. More knowledge and a deeper understanding of the role of nurse leaders, and how they can use evidence in their own managerial leadership decisions, is still needed. Despite the limited number of studies, we assume that this narrative synthesis can provide a good foundation for how to develop evidence-based leadership in the future.

Implications

Based on our review results, several implications can be recommended. First, the future of nursing success depends on knowledgeable, capable, and strong leaders. Therefore, nurse leaders worldwide need to be educated about the best ways to manage challenging situations in healthcare contexts using an evidence-based approach in their decisions. This recommendation was also proposed by nurses and nurse leaders during our discussion meeting with stakeholders.

Second, curriculums in educational organizations and on-the-job training for nurse leaders should be updated to support general understanding how to use evidence in leadership decisions. And third, patients and family members should be more involved in the evidence-based approach. It is therefore important that nurse leaders learn how patients’ and family members’ views as stakeholders are better considered as part of the evidence-based leadership approach.

Future studies should be prioritized as follows: establishment of clear parameters for what constitutes and measures evidence-based leadership; use of theories or models in research to inform mechanisms how to effectively change the practice; conducting robust effectiveness studies using trial designs to evaluate the impact of evidence-based leadership; studying the role of patient and family members in improving the quality of clinical care; and investigating the financial impact of the use of evidence-based leadership approach within respective healthcare systems.

Data availability

The authors obtained all data for this review from published manuscripts.

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Acknowledgements

We want to thank the funding bodies, the Finnish National Agency of Education, Asia Programme, the Department of Nursing Science at the University of Turku, and Xiangya School of Nursing at the Central South University. We also would like to thank the nurses and nurse leaders for their valuable opinions on the topic.

The work was supported by the Finnish National Agency of Education, Asia Programme (grant number 26/270/2020) and the University of Turku (internal fund 26003424). The funders had no role in the study design and will not have any role during its execution, analysis, interpretation of the data, decision to publish, or preparation of the manuscript.

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Department of Nursing Science, University of Turku, Turku, FI-20014, Finland

Maritta Välimäki, Tella Lantta, Kirsi Hipp & Jaakko Varpula

School of Public Health, University of Helsinki, Helsinki, FI-00014, Finland

Maritta Välimäki

Xiangya Nursing, School of Central South University, Changsha, 410013, China

Shuang Hu, Jiarui Chen, Yao Tang, Wenjun Chen & Xianhong Li

School of Health and Social Services, Häme University of Applied Sciences, Hämeenlinna, Finland

Hunan Cancer Hospital, Changsha, 410008, China

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Contributions

Study design: MV, XL. Literature search and study selection: MV, KH, TL, WC, XL. Quality assessment: YT, SH, XL. Data extraction: JC, MV, JV, WC, YT, SH, GL. Analysis and interpretation: MV, SH. Manuscript writing: MV. Critical revisions for important intellectual content: MV, XL. All authors read and approved the final manuscript.

Corresponding author

Correspondence to Xianhong Li .

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Differences between the original protocol

We modified criteria for the included studies: we included published conference abstracts/proceedings, which form a relatively broad knowledge base in scientific knowledge. We originally planned to conduct a survey with open-ended questions followed by a face-to-face meeting to discuss the preliminary results of the review. However, to avoid extra burden in nurses due to COVID-19, we decided to limit the validation process to the online discussion only.

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Välimäki, M., Hu, S., Lantta, T. et al. The impact of evidence-based nursing leadership in healthcare settings: a mixed methods systematic review. BMC Nurs 23 , 452 (2024). https://doi.org/10.1186/s12912-024-02096-4

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DOI : https://doi.org/10.1186/s12912-024-02096-4

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The application of machine learning and deep learning in intelligent transportation: a scientometric analysis and qualitative review of research trends.

literary analysis research essay

1. Introduction

2. research methods, 2.1. data collection, 2.2. tools and methods, 2.3. findings, 3. analysis and findings, 3.1. publication outputs, 3.2. co-authorship, 3.2.1. researcher cooperation, 3.2.2. countries, 3.2.3. organizations, 3.3. keyword co-occurrence, 4. qualitative discussion, 4.1. traffic-flow prediction, 4.2. public transportation, 4.3. intelligent traffic data transmission and sharing, 4.4. intelligent transportation system, 4.5. intelligent parking systems.

  • diverse research methods: studies use various ML and DL techniques, including random forest (RF), CatBoost, LSTM, ANN, CNN, and SVM, supplemented with genetic algorithms and Bayesian regularized NN;
  • varied innovative points: innovations use contextual data to predict parking utilization rates, integrate renewable energy sources for electric vehicle charging control, and improve intelligent parking rates through advanced DL;
  • rich empirical conclusions: the results demonstrate that the proposed models and methods significantly enhance parking utilization rates, profitability, accuracy, and reliability.

4.6. Traffic Congestion

4.7. vehicle detection and tracking, 4.8. vehicle identification and license plate number recognition, 4.9. traffic-light and streetlight system, 5. conclusions.

  • developing more sophisticated data processing algorithms and analysis models through the deep integration of big data and artificial intelligence to enhance traffic management and control;
  • enhancing information security and privacy protection by innovating encryption technologies and anonymization methods to safeguard personal data;
  • utilizing ML and other advanced technologies to improve the accuracy of traffic predictions, optimize traffic flow and accident prediction models, and facilitate more precise traffic decisions;
  • pairing quantum technologies with AI to open new research, development, and implementation opportunities (e.g., combinatorial optimization);
  • building cross-departmental data sharing and collaboration platforms to enhance overall efficiency and promote optimal information resource allocation;
  • advancing the development of autonomous vehicle technologies, including autonomous navigation and safe obstacle avoidance systems, will be critical to driving the next wave of innovations in the transportation sector.

Author Contributions

Data availability statement, conflicts of interest, abbreviations.

AMActivation maximization
ANNArtificial neural network
APYAverage year of publication
ARIAdjusted rand index
ATMAutomatic topic modeling
BSBatch size
BiGRUBidirectional gated recurrent unit
BOAButterfly optimization algorithm
BSPBinary space partitioning
BSSBlind source separation
BSVRBayesian support vector regression
BUCBottom-up clustering
CNNConvolutional neural networks
CSCitation score per author
CSTNContinuous surface transition network
DANDeep adaptation network
DBNDeep belief networks
DCRFNNDynamic convolutional recurrent fusion neural network
DLDeep learning
DQNDeep q-network
DTDocument type
EAIExplainable artificial intelligence
ECEvolutionary computation
EdRVFLEnhanced random vector functional link
ELMExtreme learning machine
FDAFisher discriminant analysis
FedSTNFederated spatial transformer network
FLFederated learning
GAGenetic algorithm
GANGenerative adversarial network
GASGather-apply-scatter
GCNGraph convolutional network
GCNNGenetic convolutional neural network
GNNGraph neural network
GRUGate recurrent unit
IDTIntelligent data transform
IoTInternet of Things
IRMInvariant risk minimization
ITSIntelligent transportation systems
KDEKernel density estimation
KNNK-nearest neighbor
LRLogistic regression
LSTMLong short-term memory neural networks
MDNMixture density network
MDPMarkov decision process
MLMachine learning
MLPMulti-layer perceptron
MLRMultiple linear regression
MMNMismatch negativity
MTLMMulti-task learning model
MVSNETMulti-view spatiotemporal network
NBNaive bayes
NNNeural networks
NPNumber of documents per author
POAProbabilistic output analysis
POIPoint of interest
RBFRadial basis function
RBMRestricted Boltzmann machine
RCNNRegions with convolutional neural networks
ResNetResidual network
RFRandom forest
RNNRecurrent neural network
SMOSequential minimal optimization
SVCSupport-vector classification
SVMSupport-vector machine
TBITarget bearing indicator
TFPTraffic-flow prediction
TMSTraffic management systems
WoSWeb of Science
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Up-and-Coming Research TopicsNumber of Publications
Traffic-Flow Prediction (TFP)31
Public Transportation19
Intelligent Traffic Data Transmission and Sharing16
Intelligent Transportation System (ITS)13
Smart Parking12
Traffic Congestion7
Vehicle Detection and Tracking6
Vehicle Identification and License Plate Number Recognition5
Traffic-Light and Streetlight System4
ArticlesApproachResearch InnovationData PreprocessingEmpirical ConclusionLimitationsProposed Future
[ ]SMO, BiGRUSMO algorithm for hyperparameter adjustmentMin–max normalization approachSMOBGRU-TP model outperforms the existing technology-(1) Combine mixed DL models
(2) Improve the efficiency of SMOBGRU-TP method
[ ]LSTM, RNNNoise pollution and time-series data for better predictionData InterpolationAdding noise data improves the performance by 13.48%-Reduce specialization of sensing infrastructure using feature profiles and AI technology
[ ]FL, GCNNTrusted authority principle integrated into federated learning for model data protection-FDL-TF outperforms baseline solution--
[ ]GCNStudy of superparameter optimization of T-GCNMin–max normalization approachThe superparameter optimizer selects T-GCN’s optimal hyperparameters -
[ ]EC, DCRFNNShort-term traffic-flow prediction model for 5g Internet of vehicles based on EC and DL-Ensure good unloading performance and high prediction performanceNo suitable task-scheduling algorithm is proposedTraffic-accident risk prediction
[ ]RNN, GCNNSpatiotemporal correlation obtained from traffic network-Better than the most advanced baseline model-Consider external factors that determine traffic forecasts
[ ]FedSTNPrivacy issues addressed in distributed traffic data-FedSTN has a higher prediction accuracy-Real-time path planning through traffic-flow prediction
[ ]CONV-BI-LSTMTraffic forecasting using Industry 4.0 and big-data analysis-CONV-BI-LSTM is the top choice for short-term prediction--
[ ]PVHH, IDT, Ford-FulkersonNode intelligent prediction is performed on specific nodes-Good prediction effectProblems in prediction accuracy and timeStudy of time lag and unpredictable factors
[ ]EdRVFL, RF, GCN, BOAAccurate counting of moving targets under different weather conditions-This method excels when connections are unavailable or too complex--
[ ]LSTMUtilization of large-scale taxi GPS trajectories and environmental information-Detection and tracking accuracy increase by 10%, cutting errors by approximately 50%Weather conditions are described using only qualitative variables, such as sunny and rainy weatherConsidering quantitative and human factors
[ ]RBM, SVMApplication of recurrent mixed density networks for short-term traffic-flow predictionMap matching algorithmO-Sense can effectively improve the accuracy of travel cost estimation--
[ ]LSTM, MDNBig-data architecture and real-time prediction model proposed-This method demonstrates significant superiority--
[ ]LSTM, GRUTraffic-flow prediction using technologies such as bagging and air pollution When assessing January 2020 data, its predictions were highly accurateCOVID-19 impacts prediction accuracy after January 2020Extend the initiative to the entirety of California
[ ]KNNDynamic correlation of transportation nodes integrated with spatiotemporal DL modelsMean/median method, Z-score, Min–max normalizationReduce the error rate of traffic-congestion prediction by more than 30%-(1) Study of the impact of different seasons on traffic flow
(2) Combine satellite traffic measurements with ground-sensor values
[ ]GCN, Spatiotemporal DL modelAdaptation to high mobility and frequent changes in the networkZ-score normalizationOutperforms state-of-the-art GNN baselines-(1) Integrate different GCN-based DL models
(2) Integrate the captured features into traffic prediction
[ ]LSTMParameters and operation time reducedHandling abnormal dataHigh accuracy is achieved in industrial 4.0 applications--
[ ]CNN, GNNHigh-precision traffic forecasting achievedLinear interpolation methodImproved results in short- and long-term forecastingNot considering all kinds of accidentsConsider more factors to improve the model
[ ]CNN, LSTM, AM, XGBoostTraffic-flow estimation considering external factorsMin–max normalization approachThe model has low prediction error and performs wellLack of fine-grained stop point identification for signaling users-
[ ]DBN, POAInitial step towards sensor practicability in urban managementMin–max normalization approachAST2FP-OHDBN outperforms the current state-of-the-art DL model-Design hybrid metaheuristics to enhance prediction results
[ ]GNN, LSTMMigration learning is used to address data scarcity The MSE value of the model is 6.309, MAE value is 2.256, RMSE value is 2.511Other weather factors and track characteristics are not considered during training(1) Explore the optimal value of input parameters
(2) Consider other factors affecting traffic flow
[ ]CNN, LSTMMethod proposed for analyzing cellular communication dataMin–max normalization approachIt is the best way to predict traffic flow through traffic counters on the roadSARIMA can only predict for one hourPlan to test a new anomaly detection algorithm
[ ]LSTMHierarchical information considering spatial interactionMin–max normalization approachMgat model is superior to the most advanced method--
[ ]GCN, KNNComplex dynamics and spatial relationship of mobile traffic demand captured-Enhance cellular network traffic prediction accuracy significantly Expand the scope of data collection
[ ]GCN, GRUModel learning mechanisms guided by prior domain knowledge-Model increased RMSE and MAPE by approximately 8.4–29.5% and 7.5–30.6%Study of the impact of different spatial embedded networks-
[ ]RNN, LSTMEnd-to-end solution for capturing cross-domain knowledge automaticallyMin–max normalization approachGASTN can outperform the current state baseline with a faster running time-Explore a GCN method for mobile traffic prediction based on a spatial relationship graph
[ ]GANParallel spatiotemporal DL network for learning features from time and space dimensionsMin–max normalization approachThis method has the highest accuracy, reaching 98.21%-Create a model that works effectively in both typical and unusual situations
[ ]DAN, LSTMComplex patterns and dynamics of urban transportation systems captured-The model has excellent performance in spatiotemporal data migration learning-(1) Further apply ST-DAAN to traffic-flow prediction
(2) POI recommendation tasks
[ ]CNN, LSTMTrusted authority principle integrated into federated learning for model data protection-Parallel spatiotemporal DL network outperforms competitors-Advanced DL architecture for large-scale traffic-flow prediction
[ ]RBFStudy on superparameter optimization of T-GCNEliminate noise, outliers, and missing valuesThe method based on depth RBF is superior to the traditional traffic analysis methodThe effectiveness of the model in various situations needs to be strictly testedStudy of the applicability of deep RBF networks in other fields
ArticlesApproachResearch InnovationData PreprocessingEmpirical ConclusionLimitationsProposed Future
[ ]GCN, CNN, LSTM, Res NetModeling complex nonlinear spatiotemporal relationships It shows different prediction accuracy in different regionsThere are still deficiencies in the interpretation of the modelConsider improving LSTM and exploring layered attention
[ ]TBIPassenger-flow forecast using vehicle GPS recordsData cleaning, matching, and organizationThe method outperforms time-series-based predictions for long-term taxi flow.-Real-time prediction architecture based on TBI2Flow
[ ]DNNIntegration of feature engineering technology with deep neural network for effective forecasting-The performance gain of the model is 25–37%, which is higher than the most advanced model on the standard benchmark index-Expect to perform well in weather forecasting, traffic-speed forecasting, and many other fields
[ ]RFQuantitative analysis method for regional shared travel potential mining-If carpooling is adopted, the emission-reduction effect can be well reflectedDid not take a personal attitude towards carpooling into considerationFurther investigate the attitude towards carpooling
[ ]XGBoost, CSTNExtraction of micro and macro spatial characteristics from urban taxi service demand dataMin–max normalization approachMultisensory stimulation attention and multi-periodic feature learning are shown to be effective.-(1) Expand MSSA by learning more cyclical patterns
(2) Merge more context information
[ ]IDTTaxi cruise recommendation strategy based on real-time and historical trajectory data TR-RHT can accurately recommend the cruising route for cruising time reduction --
[ ]DT, SVC, NB, LR, RFTransit congestion detection method based on opportunity perception-Over 80% congestion can be detected when used by 8–12% of commuters--
[ ]BuStopDwell position extraction from multimodal sensing using commuter’s smartphones-The framework can accurately detect various dwell positions--
[ ]FDA, BSVRQuantification of uncertainty for robust performance improvement-FDA’s predictions are highly accurate and effective at forecasting travel time distribution uncertainty--
[ ]CheetahVISDynamic bus routes provided to help users identify traffic flow Proved the effectiveness of CheetahVIS--
[ ]PubtraVisNew visualization tool developed for public transportation system operationData cleaning, reorganization, extraction, and filteringPubtraVis is a highly beneficial and user-friendly tool“Ease of use” needs improvement(1) Use GTFS static data
(2) Real-time data to develop additional visual analysis module
[ ]SVR, RF, Adaboost, GBRT, XGBoost, MLPImproved accuracy in estimating car-hailing trip mobility-This model outperforms other benchmarks in estimating car-hailing trip mobilityUse diverse geographic context features to measure the replaceability of locationConsider individual travel behavior in mobility modeling
[ ]MVST-NETUrban big data is used to predict shared bicycle travel behaviorMin–max normalization approachThe model has good performance in various tested models-Performance improvement of analytical methods to make them more interpretable
[ ]Bi-LSTMForecasting available bicycles and free slots at shared bicycle stations-It provides a powerful method for reliable and fast prediction of available bicycles--
[ ]BSSBicycle rebalancing solution in bike sharing system (BSS) The proposed method outperforms the relocation manager in terms of bicycle shortage and task difficulty--
[ ]STOPFramework proposed for predicting shared station occupancy using Bayesian and association classifiers-Shows the usefulness of maintenance actions based on short-term forecasts and readable models-Enrich station occupancy data
[ ]IRM, GNN, RNNDL-based bicycle-demand forecasting model introduced The model has higher R2, lower RMSE, and MAE and has a better prediction effectThis study is limited to possible influencing factorsExplore the impact of social population, traffic flow, and weather
[ ]Attention-Based Model, CNNAdvance prediction of potential destinations for rescheduling artificial bicycles The proposed framework excels in precision, recall, and F1 compared to top-tier methods-Simulate other relevant factors to provide better prediction of shared bicycle destinations
ArticlesApproachResearch InnovationData PreprocessingEmpirical ConclusionLimitationsProposed Future
[ ]Logistic Regression, ANN, DT, KNN, RFPredict accident severity using various classification models-The average accuracy of the decision tree (DT) model is the highest, which is 71.44%--
[ ]RNN, GAN, SVM, CNN, MMNSolve traffic-accident detection issues with semi-supervised DL and different data patterns-GAN outperforms other models’ accuracy and classification F1, with or without multimodal dataFocus only on traffic-sensor data and text dataHandle more types of data for other smart-city applications
[ ]DT, RF, MLR, NBDiscuss a paper on data models for road traffic accidents and propose prediction models The results are relatively good (the accuracy is 60–80%)-Reduce the imbalance ratio of labels before inputting data sets into the model for training
[ ]BLM, SVM, XGBoost, XAIGather high-quality data to infer different factors in urban road traffic accidents-SVM shows the highest performance in accuracy and F1 score--
[ ]XGBoost, CatBoost, LightGBM, DT, RF, Stacked DCL-XClassify the injuries caused by vehicle–pedestrian and vehicle–obstacle collisions The overlapping DCL-X model has better stability, less super parameters, and higher accuracy under different training data--
[ ]Faster R-CNNIntroduce Faster R-CNN to extract IoT electronic data features-The faster R-CNN algorithm has stronger robustness and reliability in its data collection and analysisElectronic traffic data are not clearly classified, and influence factors are not considered(1) Accurately identify its projects
(2) Optimize the designed model to obtain traffic information better
[ ]GAS, BSPAddress and overcome research challenges in IVN data processing-GPU-based graphics processing technology can achieve excellent performance on IVN data-Focus on other aspects of IVN data processing
[ ]VehiclectronPropose a new model to accurately estimate road vehicle cuboids using single-view sensors and road geometry information-Feasibility and applicability are confirmed via CCTV-captured real-road images3D box estimation depends on the target-detection modelProvide accurate information in the field of intelligent traffic recognition and control
[ ]KDEBuild a traffic visualization management system based on improved ML algorithms-The method in this paper is critical for smart-city traffic management--
[ ]BDDiscuss the application of BDA in constructing large-scale sensor data and modeling autonomous vehicles The feasibility and effectiveness of the model are verified-Content-based sensor data management and process
[ ]ARI, KNNDevelop a method to predict the psychophysiological load affecting driving safety using vehicle manipulation dataMin–max normalization approachCompared with previous models, the performance of this model is relatively low-(1) Collect data from different road environments
(2) Evaluate the transferability of the proposed model
[ ]Bagging, Boosting, ANNDevelop a method to predict high-risk bus drivers as a benchmark for effective bus safety policies-The classification accuracy of the model reaches 85%Focus only on the relationship between dangerous driving behavior and collisionThe proposed neural network model can be further improved
[ ]3D- LTSPropose a driver yawning detection method based on subtle facial motion recognition-It can detect yawning robustness in various external environmentsLow image resolution and large camera vibration reduce the effectiveness of the methodUse better image preprocessing methods
[ ]CNN, SVMPropose an ML algorithm based on smart devices and IoT network firewalls to protect data traffic-The hybrid DL model has effectiveness and high accuracy--
[ ]EEMR, BUC, TAdamDesign efficient multi-hop routing for intelligent traffic wireless sensor networks-It provides a new reference for improving the transmission and sharing efficiency of intelligent transportation data-Use edge computing, principal component analysis, and other methods to achieve data dimensionality reduction and rapid processing
[ ]CNNDevelop a new framework based on artificial intelligence (AI) to predict traffic conditions on densely deployed IoT networks-Compared with the existing traditional CNN model, LTP-CNN has higher prediction efficiency--
ArticlesApproachResearch InnovationEmpirical ConclusionLimitationsProposed Future
[ ]LTSMEstablish ML framework for smart traffic, achieve optimal accuracyImplementing intelligent transportation systems improves transportation and air quality-Explore the impact of intelligent transportation on the environment and supply chain
[ ]LSTM, Bayesian optimizationApply DL for traffic pattern detection using smartphone dataExtensive experiments demonstrate a high recognition rate and efficiencyTraining requires ample labeled data and computational complexityThe model is more robust to diverse user behaviors and optimized for its computational efficiency
[ ]DT, RF, ET, XGBoostPropose an intelligent traffic system for the IOV network with tree MLHigh detection accuracy and low computational costs are key features--
[ ]Hadoop, Spark DLIntroduce City Administration Dashboard for urban traffic analysisRoad network prediction accuracy reaches 94.05%Suitability, data privacy, and security for specific city environments-
[ ]CNNImplement resource load balancing and DL for real-time schedulingATM system outperforms traditional traffic management methodsApplicability to the specific urban environment, generalization ability of modelImprove data processing and transmission efficiency
[ ]ATMEnhance travel pattern extraction and path estimation with U-Net and GNNRMSE, MAE, and MAPE are 4%, 20.49%, and 18%, respectivelyDependence on infrastructure and vehicle equipmentConsider a variety of traffic situations
[ ]U-Net, GNNIdentify malicious traffic in SDN-based Internet of VehiclesEnhanced attack detection reduces latency and prevents buffer overflow issues-Extend the study to other urban traffic datasets
[ ]Fuzzy, logicIntroduce the ST-GCRN model for traffic-flow estimationBike-sharing system errors reduced by 98% and 63% in the estimation--
[ ]GCN, LSTMPropose MTLM model for travel time estimationReal-world data sets have been extensively experimented on--
[ ]MTLMBatam City Government adopts smart mobility for sustainable transportationOptimal implementation and sustainable approach are yet to be fully realized-Extend the datasets to other cities or transit systems
[ ]Qualitative analysis research methodSafePath algorithm ensures differential privacy with minimal data impactSafePath enhances efficiency and scalability for large and sparse data situations--
[ ]SafePathEstablish ML framework for smart traffic, achieve optimal accuracyImplementing intelligent transportation systems improves transportation and air quality--
ArticlesApproachResearch InnovationEmpirical ConclusionLimitationsProposed Future
[ ]RF, CatBoostEvaluate RF and CatBoost for MLUsing context data has a positive impact on parking utilization prediction-Use POI data as context data
[ ]LSTMStudy of electric vehicle presence in urban IoTProper EV charging control boosts profits-Use renewable energy input in the model
[ ]LSTMIdentify optimal predictive model in ML and DLThe results obtained improve the existing results in the literature--
[ ]ANNUse ANN for parking-space data collectionThe proposed method improves the intelligent parking rate through DL-Use genetic algorithm and neural network for training
[ ]LSTMDevelop a mobile smart parking app with DLHigh accuracy and reliability-Investigate the influence of parking lots on traffic density under different parameters
[ ]CNN, LSTM, GAEstablish a parking-space availability systemCompared to existing states, this model has better performance-Study of traffic density under different parameters
[ ]ANN, SVM, ARIMA, RNNPredict available parking in city garagesBayesian regularized neural network is a reliable and fast time-period prediction method--
[ ]IoTAddress tourist city parking layout issuesSimple and easy to operate, with low requirements for data accuracy--
[ ]CNN, ELMPropose parking-spot detection with CNN and ELMThe CNN elm method outperforms other hybrid CNN models using different classifiers-Verify the performance of CNN-ELM on other parking datasets
[ ]IoT, LSTMPredict parking availability via IoT, cloud, and sensorsThe proposed model is superior to the most advanced prediction model at presentOnly parking space occupancy information is considered without considering weather conditions and social eventsConsider weather conditions, social event information, and parking-lot occupancy information
ArticlesApproachResearch InnovationEmpirical ConclusionLimitationsProposed Future
[ ]FITCCS-VNRemote viewing of road traffic flow and vehicle volumeThe system achieves an accuracy of 95% and a miss rate of 5%-
[ ]Logit, SVMCommon multivariate outlier detection methodsOutlier detection plays an important role in discovering useful and valuable information-(1) Identify variables with high discriminatory power
(2) Apply the algorithms to various road types in a smart city
[ ]DNNTC2S-DNN model integrates IoT and DL for congestion forecastThe performance of the TC2S-DNN model is reported to be better than previously published approachesIf the information is obtained in delay, or there is too much noise by the signal sensors. It can be influenced by the output of the proposed solution-
[ ]Deep double-Q learningAdaptive traffic signal adjustments based on vehicle typesThe average waiting time at intersection points by up to 91.7%The sampled data is biased and not exactly the same or the same distribution-
[ ]Hybrid Neuro-FuzzyEnhance congestion prediction accuracy with IoT sensor dataThe model has an even higher accuracy of 99.214% during the training phase--
[ ]AFTApply survival analysis methods for congestion assessmentThe results show a dramatic improvement in data quality and successful evaluation of traffic conditions with high reliability-Apply proposed methods for effective traffic control and management in smart cities
[ ]C-V2X networkOptimize cellular AP and vehicle throughput with user-AP associationsResults confirm the effectiveness and superiority of the traffic offloading method via DL in CV2X networks--
ArticlesApproachResearch InnovationEmpirical ConclusionLimitationsProposed Future
[ ]EKF, NN, SVMIntegrating data from GPS augmentation and low-cost DR systemsEKF/SVM trained with particle-swarm optimization is more suitable for localizationGPS quality may decrease in actual situationsResearch on vehicle prototype based on Arduino
[ ]-Adapt to time-varying and unbalanced tracking workloads caused by traffic dynamicsShows 100% tracking coverage and real-time assurance--
[ ]EKF, SVM, RFUsing SVM to overcome the shortage of EKF when the GPS signal is interruptedExperience 94% improvement over simple EKF predictionWhen interrupted, GPS quality will decrease(1) Test and improve this hybrid solution in case of GPS interruption
(2) Combine this method with a distributed algorithm
[ ]EKF, SVM, Faster R-CNNAn intelligent vision sensor is preset for the detection and tracking of synchronous attitude estimationIntegrating vehicle position and attitude into EKF enhances tracking results--
[ ]RetinaNetUsing RetinaNet architecture and Cars Overhead with Context dataset to find vehicles in satellite imagesThe model has good vehicle-detection accuracy and low detection time-(1) Expand experimental evaluation and conduct ablation experiments
(2) Enhance the model with a street-detection model
[ ]DNNA vehicle detection and tracking method in bad weather conditions is proposedThis method is superior to the most advanced method under adverse weather conditions-Some hard cases still need more attention and improvement
ArticlesApproachResearch InnovationEmpirical ConclusionLimitationsProposed Future
[ ]CNNCNN for vehicle feature extractionThe accuracy of the CNN model was evaluated based on the confidence values of the detected objectsThe larger and lower size of the image can affect the validation process(1) Expand the system to include more vehicle types
(2) Improve the accuracy and robustness of the model
[ ]DLVLPNR modelFast R-CNN with Inception V2 and Tesseract OCR for license plate recognitionThe DL-VLPNR model can achieve optimal detection and recognition performance, as it attained the highest accuracy of 0.986-Handle more diverse conditions and integration into real-time applications for smart-city management
[ ]RCNNExtending vehicle ID for counting and analysis The average accuracy of the proposed method is 90.4% Increasing the number after some time, the network goes into the stage of overfitting, and the accuracy of the network decreasesOptimize the method for enhanced performance
[ ] Deep active learning frameworkMemory space for active learning in vehicle-type recognitionOver 90% accuracy for 20 vehicle typesThe sample data is biased and does not have the same distribution-
ArticlesApproachResearch InnovationEmpirical ConclusionLimitationsProposed Future
[ ]RL, DQNA dynamic discount factor is embedded in the iterative Bellman equation to prevent bias in the estimation of the action value functionThe trained agent outperforms the fixed timing plan, cutting total system delay by 20%-Apply DRL to multiple intersections
[ ]RLCombining speed guidance system with traffic-signal control based on reinforcement learningThe proposed method is superior to a fixed timing plan and traditional drive control-(1) Add offset optimization to signal timing optimization
(2) Use V2V communication and dynamic velocity guidance strategy
[ ]MDP, RLKS-DDPG is proposed to achieve optimal control by enhancing the cooperation between traffic signalsKS-DDPG significantly boosts large-scale traffic network control and handles flow fluctuations effectivelyAll agents need to communicate, resulting in limited overall communication efficiencyConsider using heterogeneous vehicles to build a more realistic traffic flow
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Zhang, J.; Wang, J.; Zang, H.; Ma, N.; Skitmore, M.; Qu, Z.; Skulmoski, G.; Chen, J. The Application of Machine Learning and Deep Learning in Intelligent Transportation: A Scientometric Analysis and Qualitative Review of Research Trends. Sustainability 2024 , 16 , 5879. https://doi.org/10.3390/su16145879

Zhang J, Wang J, Zang H, Ma N, Skitmore M, Qu Z, Skulmoski G, Chen J. The Application of Machine Learning and Deep Learning in Intelligent Transportation: A Scientometric Analysis and Qualitative Review of Research Trends. Sustainability . 2024; 16(14):5879. https://doi.org/10.3390/su16145879

Zhang, Junkai, Jun Wang, Haoyu Zang, Ning Ma, Martin Skitmore, Ziyi Qu, Greg Skulmoski, and Jianli Chen. 2024. "The Application of Machine Learning and Deep Learning in Intelligent Transportation: A Scientometric Analysis and Qualitative Review of Research Trends" Sustainability 16, no. 14: 5879. https://doi.org/10.3390/su16145879

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Research Progress of ARTP Mutagenesis Technology Based on Citespace Visualization Analysis

  • Review Paper
  • Published: 11 July 2024

Cite this article

literary analysis research essay

  • Shun Gao 1 , 2   na1 ,
  • Li Li   ORCID: orcid.org/0000-0002-2385-7950 1 , 2   na1 ,
  • Yonggong Wei 2 ,
  • Lei Wen 2 ,
  • Shujuan Shao 2 ,
  • Jianhang Wu   ORCID: orcid.org/0000-0002-3429-9552 1 , 2 &
  • Xuyan Zong   ORCID: orcid.org/0000-0002-7178-5525 1 , 2  

Atmospheric and room temperature plasma (ARTP) mutagenesis technology has been developed rapidly in recent years because of its simple operation, safety, environmental friendliness, high mutation rate, and large mutation library capacity. It has been widely used in traditional fields such as food, agriculture, and medicine, and has been gradually applied in emerging fields such as environmental remediation, bioenergy, and microalgae utilization. In this paper, the Web of Science Core Collection (WOSCC) was used as the data source, and the keywords and core literature of ARTP mutagenesis technology were plotted by citespace software, and the research progress and research hotspots of ARTP mutagenesis technology were analyzed. Through citespace visualization analysis, it is concluded that the country with the largest number of studies is China, the institution with the largest number of studies is Jiangnan University, and the author of the most published papers is Jiangnan University. Through keyword analysis, it is concluded that the most widely used ARTP mutagenesis technology is fermentation-related majors, mainly for biosynthesis and microbial research at the molecular level. Among them, the most widely used microorganisms are Escherichia coli and Saccharomyces cerevisiae .

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Availability of Data and Materials

The datasets generated during and analyzed during the current study are available from the corresponding author on reasonable request.

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Shun Gao and Li Li have contributed to the work equally and should be regarded as co-first authors.

Authors and Affiliations

Liquor Brewing Biotechnology and Application Key Laboratory of Sichuan Province, Sichuan University of Science and Engineering, Yibin, 644000, Sichuan, China

Shun Gao, Li Li, Jianhang Wu & Xuyan Zong

College of Bioengineering, Sichuan University of Science and Engineering, Yibin, 644000, Sichuan, China

Shun Gao, Li Li, Yonggong Wei, Lei Wen, Shujuan Shao, Jianhang Wu & Xuyan Zong

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Conceptualization: [Xuyan Zong] [Shun Gao] [Li Li], [Yonggong Wei] [Lei Wen], [Shujuan Shao] [Jianhang Wu]; Data curation:[Shun Gaon] [Li Li]; Formal analysis: [Shun Gao] [Li Li]; Funding acquisition: [Xuyan Zong] [Li Li]; Investigation: [Xuyan Zong] [Shun Gao] [Li Li] [Jianhang Wu]; Project administration: [Xuyan Zong] [Li Li]; Resources: [Xuyan Zong] [Li Li]; Supervision: [Xuyan Zong] [Li Li]; Visualization: [Xuyan Zong] [Shun Gao] [Li Li] [Jianhang Wu]; Writing-original draft: [Xuyan Zong] [Shun Gao] [Li Li] [Jianhang Wu]; Writing-review&editing: [Xuyan Zong] [Shun Gao] [Li Li] [Jianhang Wu].

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Gao, S., Li, L., Wei, Y. et al. Research Progress of ARTP Mutagenesis Technology Based on Citespace Visualization Analysis. Mol Biotechnol (2024). https://doi.org/10.1007/s12033-024-01231-5

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Published : 11 July 2024

DOI : https://doi.org/10.1007/s12033-024-01231-5

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    literary analysis research essay

  2. 😂 Sample analysis essay. How to Write a Literary Analysis (Outline

    literary analysis research essay

  3. FREE 10+ Literary Analysis Samples in PDF

    literary analysis research essay

  4. How to Write a Literary Analysis Essay Step by Step

    literary analysis research essay

  5. How to Write a Literary Analysis (Outline & Examples) at KingEssays©

    literary analysis research essay

  6. 7+ Literary Analysis Templates

    literary analysis research essay

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  1. How to Write a Literary Research Essay

  2. Outlining for Literary Analysis Essay

  3. Mastering the Thesis: A Literary Analysis Essay's Heart #short №4

  4. Secret of writing the introduction of research paper

  5. How to write a literary analysis body paragraph

  6. Literary Analysis Practice Questions for Praxis Elementary Reading & Language Arts (5002)

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  1. How to Write a Literary Analysis Essay

    Table of contents. Step 1: Reading the text and identifying literary devices. Step 2: Coming up with a thesis. Step 3: Writing a title and introduction. Step 4: Writing the body of the essay. Step 5: Writing a conclusion. Other interesting articles.

  2. Literary Analysis: Sample Essay

    Literary Analysis: Sample Essay. We turn once more to Joanna Wolfe's and Laura Wilder's Digging into Literature: Strategies for Reading, Writing, and Analysis (Boston: Bedford/St. Martin's, 2016) in order to show you their example of a strong student essay that has a strong central claim elucidated by multiple surface/depth arguments ...

  3. 12.14: Sample Student Literary Analysis Essays

    Heather Ringo & Athena Kashyap. City College of San Francisco via ASCCC Open Educational Resources Initiative. Table of contents. Example 1: Poetry. Example 2: Fiction. Example 3: Poetry. Attribution. The following examples are essays where student writers focused on close-reading a literary work.

  4. Literary Analysis Essay

    A literary analysis essay is an important kind of essay that focuses on the detailed analysis of the work of literature. The purpose of a literary analysis essay is to explain why the author has used a specific theme for his work. Or examine the characters, themes, literary devices, figurative language, and settings in the story.

  5. PDF HOW TO WRITE A LITERARY ANALYSIS ESSAY

    The term regularly used for the development of the central idea of a literary analysis essay is the body. In this section you present the paragraphs (at least 3 paragraphs for a 500-750 word essay) that support your thesis statement. Good literary analysis essays contain an explanation of your ideas and evidence from the text (short story,

  6. Writing a Literary Analysis Essay

    A literary analysis essay asks you to make an original argument about a poem, play, or work of fiction and support that argument with research and evidence from your careful reading of the text. It can take many forms, such as a close reading of a text, critiquing the text through a particular literary theory, comparing one text to another, or ...

  7. How to Write a Literary Analysis: 6 Tips for the Perfect Essay

    These 4 steps will help prepare you to write an in-depth literary analysis that offers new insight to both old and modern classics. 1. Read the text and identify literary devices. As you conduct your literary analysis, you should first read through the text, keeping an eye on key elements that could serve as clues to larger, underlying themes.

  8. Literary Analysis-How To

    A literary analysis is a common assignment in first-year writing and English courses. Despite how ubiquitous they are, literary analyses can sometimes feel confusing or maybe even a little intimidating. This type of analytical essay requires you to zoom into a text to unpack and wrestle with deeper meaning (through exploring diction, syntax ...

  9. Writing Structure & Procedures

    A literary analysis essay outline is written in standard format: introduction, body paragraphs, and conclusion. An outline will provide a definite structure for your essay. I. Introduction: Title. A. a hook statement or sentence to draw in readers. B. Introduce your topic for the literary analysis.

  10. Literary Analysis Research Paper

    Literary Analysis Research Paper. by David A. James The type of research paper required in most sophomore literature courses is generally referred to as a literary analysis research paper because its focus must be on an element of the literary work's construction as a piece of literature—for example, an element such as the work's ...

  11. PDF Outline Structure for Literary Analysis Essay

    3. Body: The body of your paper should logically and fully develop and support your thesis. a. Each body paragraph should focus on one main idea that supports your thesis statement. b. These paragraphs include: i. A topic sentence - a topic sentence states the main point of a paragraph: it serves as a mini-thesis for the paragraph.

  12. PDF Writing a Literary Analysis

    A literary analysis is a paper on one, or many, of the key elements in a text and how they support a main idea or purpose. When writing a literary analysis, you are not just identifying elements in a text, but analyzing those specific elements. Step 1: Identify the Author's Purpose. Identifying the author's purpose will serve as the thesis ...

  13. How to Write a Literary Analysis Essay [Step By Step]

    Literary Analysis Essay Outline. Writing a literary analysis essay starts with understanding the information that fills an outline. This means that writing details that belong in how to write an analytical essay should come fairly easily. If it is a struggle to come up with the meat of the essay, a reread of the novel may be necessary.

  14. PDF Literary Analysis Essay Outline

    Allow your voice to emerge.) Give background information about the theory as it relates to your text. Incorporate research. Define necessary terms. State the thesis and projected plan in the last 1-2 sentences. The body consists of 3 paragraphs. Begin each paragraph with a topic sentence that states an idea related to the thesis.

  15. How To Write A Literary Analysis Essay: What Is It?

    An essay that seeks to analyze and interpret a piece of literature by focusing on its story, characters, themes, and symbols is known as a literary analysis essay. Such a paper goes beyond just summarizing the text; it analyzes the literary devices used, the author's objectives, and the text's more profound implications.

  16. 9.10-Sample Research-Based Literary Essay

    Sample Prompt. Assignment Description: The purpose of this essay is to effectively communicate a persuasive argument based on research and analysis of primary and secondary texts. For this assignment, you will engage in secondary research and close reading of a primary text to develop an original, nuanced argument about one of the play's we ...

  17. Example of an Insightful Literary Analysis Essay

    Get a sense of what to do right with this literary analysis essay example that will offer inspiration for your own assignment.

  18. PDF Literary Analysis Sample Paper

    This paragraph is a great example of the paper's author showing the reader how and why the supporting material supports the paper's thesis. 6. Literary Analysis Sample Paper August 2016. The conclusion of the analysis reiterates the paper's thesis and sums up the moral produced by the theme of the book. Notes:

  19. Research Methods

    Most commonly used undergraduate research methods: Scholarship Methods: Studies the body of scholarship written about a particular author, literary work, historical period, literary movement, genre, theme, theory, or method. Textual Analysis Methods: Used for close readings of literary texts, these methods also rely on literary theory and ...

  20. Student Essay Example 2 (Literary Analysis) in MLA

    Attributions. Images and video created by Dr. Sandi Van Lieu and licensed under CC BY NC SA. Student essay example by Janelle Devin and used with permission. Previous: Sample Paper in MLA and APA.

  21. Literature and Literary Research

    There are a lot of different kinds of sources that you can use in your analysis. This guide will show you how to find and use these by type. Primary Sources are the main pieces of evidence you will use to make your claim. The texts you are reading are a primary source; they are the most important primary source you're working with.

  22. PDF Writing a Literary Analysis Paper

    The paper is framed as a summary rather than as a literary analysis.) 6. Make an extended list of evidence. Find more evidence from the text to support the working thesis. Then select the evidence that will be used in the paper. 7. Refine the thesis. Make sure the thesis fits with the evidence that has been presented. 8.

  23. Writing in Literature

    Writing about World Literature. This resource provides guidance on understanding the assignment, considering context, and developing thesis statements and citations for world literature papers. It also includes a PowerPoint about thesis statements in world literature for use by instructors and students.

  24. Full Guide to Writing an Analytical Essay

    The analytical essay format is most often used as a tool to showcase research findings. It can be written on a variety of subjects, including literature, films, historical events, and scientific phenomena. Analytical essay outline. Like with other essay types, an analytical essay outline has a standard structure that writers must follow.

  25. The impact of evidence-based nursing leadership in healthcare settings

    The central component in impactful healthcare decisions is evidence. Understanding how nurse leaders use evidence in their own managerial decision making is still limited. This mixed methods systematic review aimed to examine how evidence is used to solve leadership problems and to describe the measured and perceived effects of evidence-based leadership on nurse leaders and their performance ...

  26. Sustainability

    Machine learning (ML) and deep learning (DL) have become very popular in the research community for addressing complex issues in intelligent transportation. This has resulted in many scientific papers being published across various transportation topics over the past decade. This paper conducts a systematic review of the intelligent transportation literature using a scientometric analysis ...

  27. Research Progress of ARTP Mutagenesis Technology Based on ...

    Analysis of Research Institutions. The network co-occurrence diagram of the research institutions is shown in Fig. 3, with 163 nodes and 210 links, indicating that a total of 163 different institutions have published 249 articles on ARTP mutagenesis technology.Table 2 lists the top 10 institutions in the number of publications. All the institutions listed in the table are from China ...