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[2] Understanding Content Analysis: Characteristics and Applications — Content analysis is defined by several key characteristics that make it a unique and effective research method: 1. Systematic and objective 🔗. One of the defining traits of content analysis is its systematic approach. Researchers develop clear guidelines and coding schemes to ensure consistency and objectivity when examining content.
[7] Content Analysis - Methods, Types and Examples - Research Method — Content Analysis - Methods, Types and Examples Home » Content Analysis – Methods, Types and Examples Content Analysis – Methods, Types and Examples This article explores the definition, methods, types, and examples of content analysis, highlighting its importance and applications across various fields. Content analysis is a research method used to analyze, categorize, and interpret the content of communication in a systematic and replicable manner. For example, a researcher analyzing political speeches might use content analysis to quantify how often certain keywords, like “freedom” or “equality,” are used and interpret their significance in shaping public opinion. Framework Analysis – Method, Types and Examples Data Analysis – Process, Methods and Types Framework Analysis – Method, Types and Examples
[13] Coding Sheet Example for Content Analysis - Insight7 — Designing a Coding Sheet for Content Analysis Template. When designing a coding sheet for a content analysis template, first consider the key variables relevant to your research question. Identify specific themes or categories that you aim to study. These categories could encompass aspects such as tone, intent, and the presence of specific phrases.
[15] Qualitative Content Analysis: How to Build a Coding Scheme — Coding framework development is a vital step in qualitative content analysis, facilitating the organization of data into meaningful categories. Establishing a robust coding scheme enhances the clarity of findings and enables a deeper understanding of the underlying themes within the data.
[16] Qualitative Data Coding 101 (With Examples) - Grad Coach — A little bit of both… hybrid coding approaches
[21] Content Analysis - Methods, Types and Examples - Research Method — Content Analysis - Methods, Types and Examples Home » Content Analysis – Methods, Types and Examples Content Analysis – Methods, Types and Examples This article explores the definition, methods, types, and examples of content analysis, highlighting its importance and applications across various fields. Content analysis is a research method used to analyze, categorize, and interpret the content of communication in a systematic and replicable manner. For example, a researcher analyzing political speeches might use content analysis to quantify how often certain keywords, like “freedom” or “equality,” are used and interpret their significance in shaping public opinion. Framework Analysis – Method, Types and Examples Data Analysis – Process, Methods and Types Framework Analysis – Method, Types and Examples
[24] Content Analysis | Guide, Methods & Examples - Scribbr — Content analysis is a research method used to identify patterns in recorded communication. To conduct content analysis, you systematically collect data from a set of texts, which can be written, oral, or visual: Books, newspapers and magazines Speeches and interviews Web content and social media posts Photographs and films Content analysis can be both quantitative (focused on counting and measuring) and qualitative (focused on interpreting and understanding). In both types, you categorize or “code” words, themes, and concepts within the texts and then analyze the results. Researchers use content analysis to find out about the purposes, messages, and effects of communication content. Because content analysis can be applied to a broad range of texts, it is used in a variety of fields, including marketing, media studies, anthropology, cognitive science, psychology, and many social science disciplines.
[25] Content Analysis Method and Examples - Columbia Public Health — Content Analysis Method and Examples | Columbia Public Health | Columbia University Mailman School of Public Health Content analysis is a research tool used to determine the presence of certain words, themes, or concepts within some given qualitative data (i.e. text). Using content analysis, researchers can quantify and analyze the presence, meanings, and relationships of such certain words, themes, or concepts. To analyze the text using content analysis, the text must be coded, or broken down, into manageable code categories for analysis (i.e. Three Approaches to Qualitative Content Analysis.Qualitative Health Research. At Columbia University Mailman School of Public Health, more detailed training is available through the Department of Sociomedical Sciences- P8785 Qualitative Research Methods.
[27] Methodologies for Digital Discourse Analysis — Content analysis enables systematic examination of digital texts, digital ethnography provides insights into virtual communities, and corpus linguistics allows for the analysis of large text corpora. Together, these methodologies equip researchers with robust tools to explore and interpret the multifaceted nature of digital communication.
[29] Unveiling Content Analysis in the Contemporary Media Ecosystem — It traces the historical evolution of content analysis, from its origins in print media scrutiny to its contemporary application in digital media, highlighting the methodological shifts from quantitative to qualitative approaches. The chapter discusses the challenges and implications of manual and automated data annotation, underscoring the
[30] Content Analysis in the Digital Age: Tools, Functions, and ... - Springer — Content analysis, which was once a particular, quantitative method of textual analysis among many others, has become a dominant, even ubiquitous way of getting information in the digital age, as keyword search, a pivotal element of content analysis, is the most widespread feature of many Internet applications, from search engines to password
[42] Content Analysis: An Introduction to Its - ProQuest — In the first chapter, the author outlines the history of content analysis. He includes well-chosen examples as he traces its development from its origins in Renaissance analysis of religious texts, through early 20th century focus on newspaper content, World War II concerns with propaganda, and postwar expansion into broadcast media and
[43] PDF — Content analysis. Jim Macnamara . ... (2016: 10) trace the origin of formal academic content analysis a to speech Weber made to the first congress of German sociologists in 1910 . In it, Weber
[44] Sage Research Methods - Content Analysis: An Introduction to Its ... — Sage Research Methods - Content Analysis: An Introduction to Its Methodology - History Interpreting communications as texts in the contexts of their social uses distinguishes content analysis from other empirical methods of inquiry. The Fourth Edition has been completely revised to offer readers the most current techniques and research on content analysis, including new information on reliability and social media. This chapter discusses several stages in the history of content analysis: quantitative studies of the press; propaganda analysis during World War II; social scientific uses of the technique in studies of political symbols, historical documents, anthropological data, and psychotherapeutic exchanges; computer text analysis and the new media; and qualitative challenges to content analysis. Sign in to access this content
[45] Sage Research Methods - Content Analysis: An Introduction to Its ... — Introduction. The term content analysis is about 70 years old. Webster's Dictionary of the English Language included the term in its 1961 edition, defining it as "analysis of the manifest and latent content of a body of communicated material (as a book or film) through classification, tabulation, and evaluation of its key symbols and themes in order to ascertain its meaning and probable
[47] The Importance of Models in Sociology The Example of Max Weber — 4. Conclusion The abundant use of models in sociology and the considerations developed above allow us to return to what is one of the main contributions of Weber's epistemology and methodology, namely the effort to introduce objective criteria in historical-social studies based on causal explanations of human actions through empirical studies.
[48] Max Weber and contemporary sociological research — Weber's methodology exerts a clear and widely acknowledged influence on contemporary sociological research. His theory of social action is still being used and updated for the explanation of
[49] Weber's contribution to content analysis - Semantic Scholar — The subject of this paper is Max Weber's contribution to content analysis as a sociological research procedure. Content analysis gained the legitimacy of the sociological method of research in the middle of the 20th century, and Weber occupies a significant place in its history. He used the basic idea of content analysis in "The Protestant Ethic and the Spirit of Capitalism" (1904-1905). Weber
[52] New methodologies for the digital age? How methods (re-)organize ... — Interestingly, the term "content-analysis" is prominent in most journal clusters, indicating the flexibility of content analysis as both a qualitative and quantitative method and its centrality in analyzing social media data to trace and understand the social world that produced such data.
[55] PDF — In the invention of the printing press by Johannes Gutenberg revolutionized communication in the Renaissance, profoundly impacting society, culture, and knowledge dissemination. TRANSFORMATION OF EDUCATION The printing press revolutionized education during the Renaissance, democratizing access to knowledge and transforming the way information was disseminated and consumed. In the printing press revolutionized education during the Renaissance by standardizing textbooks, establishing printing presses in universities and schools, and democratizing access to knowledge. While the challenges and opportunities presented by the digital revolution are vast and complex, the enduring legacy of the printing press reminds us of the transformative power of technology to democratize access to information, foster cultural exchange, and empower individuals to participate more fully in society.
[56] WWII Propaganda: The Influence of Racism - Campus Writing Program — By dehumanizing the Japanese and instilling fear in the minds of Americans, WWII propaganda posters prompted cultural and racial hatred that led to massive historical consequences for the Japanese. This image verifies that multiple WWII propaganda posters achieved their purpose through virtually the same means: they instilled fear and racial prejudice against the Japanese in order to gain the United States support for the war. Renteln hypothesizes that the fact that the Japanese Americans were portrayed as animals in much of the World War II propaganda may have helped convince the American public that inhumane treatment was acceptable. (Renteln, 620.) Posters such as This is the Enemy and Tokio Kid Say illustrated this perception of the Japanese as animals (Figures 1 and 2).
[57] The Role of Propaganda in World War II: Influencing Public Perception — Military propaganda in World War II refers to the strategic communication techniques employed by governments to influence public perception and bolster support for the war effort. Overall, the strategic application of propaganda during World War II played a vital role in mobilizing nations, influencing both military and civilian morale while demonstrating the profound power of information management in warfare. Military propaganda significantly impacted civilian morale during World War II, shaping public perception and community resilience. Collectively, these efforts demonstrated that propaganda in Allied nations was instrumental in shaping public perceptions, ultimately fostering a sense of solidarity essential for sustaining morale during the prolonged conflict of World War II. Propaganda in World War II served as a pivotal tool for influencing public perception, mobilizing support, and shaping national narratives.
[58] Content analysis research themes 1977-2000: Evolution and change — The development of content analysis as a full-fledged scientific method took place during World War II when the U.S. government sponsored a project under the directorship of Harold Lasswell to evaluate
[67] The Significance of Religious Writings in the English Renaissance - JSTOR — An analysis by subjects of the output of the English printing presses from the time of Caxton to the year 1641, made by Miss Edith L. Klotz of the Huntington Library, has shown that 43.7 per cent of the total number of books printed were in some way religious in theme.7 In some years religious books accounted for more than
[100] How To Conduct Content Analysis: A Comprehensive Guide — Integration with Statistical Methods: To improve data analysis and interpretation, quantitative content analysis can be combined with statistical techniques. Techniques such as frequency counts, chi-square tests, or regression analysis can be applied to analyze coded content and test hypotheses derived from theoretical frameworks.
[101] PDF — Qualitative content analysis has been defined as: • “a research method for the subjective interpretation of the content of text data through the systematic classification process of coding and identifying themes or patterns” (Hsieh & Shannon, 2005, p.1278), • “an approach of empirical, methodological controlled analysis of texts within their context of communication, following content analytic rules and step by step models, without rash quantification” (Mayring, 2000, p.2), and • “any qualitative data reduction and sense-making effort that takes a volume of qualitative material and attempts to identify core consistencies and meanings” (Patton, 2002, p.453). To improve the credibility of qualitative content analysis, researchers not only need to design data collection strategies that are able to adequately solicit the representations, but also to design transparent processes for coding and drawing conclusions from the raw data.
[107] Media Content Analysis: Methods & Examples - StudySmarter — Media Content Analysis is a research method used to systematically assess and interpret the presence, themes, and patterns within various forms of media content such as television, radio, newspapers, and online platforms. This approach is essential for understanding how media content reflects and influences public opinion, culture, and social trends over time.
[112] Qualitative Content Analysis: How to Build a Coding Scheme — Coding framework development is a vital step in qualitative content analysis, facilitating the organization of data into meaningful categories. Establishing a robust coding scheme enhances the clarity of findings and enables a deeper understanding of the underlying themes within the data.
[117] Full article: Advancing Automated Content Analysis for a New Era of ... — Multi-modal content. Computational communication research has for a long time focused primarily on the analysis of natural language (van Atteveldt & Peng, Citation 2018). This was easily justified given that much work was concerned with news content, which was for a large part consumed in textual format.
[118] How Is Technology Changing the World, and How Should the World Change ... — Technologies are becoming increasingly complicated and increasingly interconnected. Cars, airplanes, medical devices, financial transactions, and electricity systems all rely on more computer software than they ever have before, making them seem both harder to understand and, in some cases, harder to control. Government and corporate surveillance of individuals and information processing
[120] Digital Tools and Techniques in Qualitative Research: Digital Skills ... — Integrating digital tools has brought about a paradigm shift in data collection and analysis methodologies within qualitative research. The ability to conduct virtual interactions has expanded the geographical reach of studies, enabling researchers to include diverse and global participants.
[122] Methodologies for Digital Discourse Analysis — It allows researchers to analyze online content, such as social media posts and forums, to uncover patterns, themes, and trends in digital communication. Content analysis of digital media is a versatile and powerful methodology for uncovering patterns, themes, and trends in online discourse. Content analysis enables systematic examination of digital texts, digital ethnography provides insights into virtual communities, and corpus linguistics allows for the analysis of large text corpora. What are some applications of corpus linguistics in digital discourse analysis?Applications of corpus linguistics in digital discourse analysis include examining how specific words or phrases are used in online discussions, identifying changes in language use over time, and analyzing discourse related to particular events or topics.
[126] The Evolution of AI: Exploring Recent Developments in Content Analysis ... — Among the notable advancements are Content Analysis Systems, Interactive Content Applications, and Intelligent Document Processing. This article delves into the latest developments in these areas, highlighting their implications and potential future trajectories.
[129] Recent advancements and challenges of NLP-based sentiment analysis: A ... — Recent advancements and challenges of NLP-based sentiment analysis: A state-of-the-art review - ScienceDirect Recent advancements and challenges of NLP-based sentiment analysis: A state-of-the-art review Sentiment analysis is a method within natural language processing that evaluates and identifies the emotional tone or mood conveyed in textual data. For the further advancement of sentiment analysis, gaining a deep understanding of its algorithms, applications, current performance, and challenges is imperative. We also explored Machine Learning, Deep Learning, Large Language Models and Pre-trained models in sentiment analysis, providing insights into their advantages and drawbacks. This extensive review provides a complete understanding of sentiment analysis, covering its models, application domains, results analysis, challenges, and research directions. Next article in issue Sentiment analysis No articles found. For all open access content, the relevant licensing terms apply.
[132] Recent Advances in Text Analysis - Annual Reviews — Text analysis is an interesting research area in data science and has various applications, such as in artificial intelligence, biomedical research, and engineering. We review popular methods for text analysis, ranging from topic modeling to the recent neural language models. In particular, we review Topic-SCORE, a statistical approach to topic modeling, and discuss how to use it to analyze the Multi-Attribute Data Set on Statisticians (MADStat), a data set on statistical publications that we collected and cleaned. In particular, we propose a new statistical model for ranking the citation impacts of 11 topics, and we also build a cross-topic citation graph to illustrate how research results on different topics spread to one another. Keyword(s): BERT, journal ranking, knowledge graph, neural network, SCORE, Stigler's model, topic weight, Topic-SCORE
[134] Advancements in natural language processing: Implications, challenges ... — Advancements in natural language processing: Implications, challenges, and future directions - ScienceDirect Search ScienceDirect Advancements in natural language processing: Implications, challenges, and future directions open access This research delves into the latest advancements in Natural Language Processing (NLP) and their broader implications, challenges, and future directions. With the ever-increasing volume of text data generated daily from diverse sources, extracting relevant and valuable information is becoming more complex. The advancements in Natural Language Processing (NLP), namely in transformer-based models and deep learning techniques, have demonstrated considerable potential in improving the precision and consistency of various NLP applications. Previous article in issue Next article in issue Natural language processing Recommended articles No articles found. For all open access content, the relevant licensing terms apply.
[138] Text Summarization and Sentiment Analysis Using Transformer-Based ... — In fine-grained sentiment analysis, these models decode intricate sentiments within texts. BERT utilizes contextual embeddings to discern nuanced relationships between words, T5 fine-tunes for sentiment analysis efficiently, and GPT-2 adapts to text classification challenges for sentiment interpretation.
[144] Bridging the Gap: Integrating Qualitative and Quantitative Approaches ... — Integrating qualitative and quantitative approaches in social science studies can offer several benefits. Firstly, it allows researchers to gain a more comprehensive understanding of complex social phenomena by triangulating different sources of data.
[145] Synergy and Synthesis: Integrating Qualitative and Quantitative Data — Quantitative data can identify individuals, groups and settings for qualitative fieldwork and indicate representative and unrepresentative cases. Quantitative data can counteract the 'holistic fallacy' that all aspects of a situation are congruent, and can demonstrate the generalisability of limited-sample observations.
[148] The Impact Of Interactive Content In Digital Marketing: How To Engage ... — Two key factors to consider when assessing interactive content performance are metrics tracking and user feedback analysis. Metrics such as engagement rates, click-through rates, and time spent on page provide valuable insight into how users interact with the content, while analyzing user feedback can offer additional context to improve future
[149] Exploring the Impact of Interactive Content on User Experiences within ... — Our research employed a mixed-method approach, blending quantitative analysis to gauge user engagement, learning effectiveness, and acceptance of technology with qualitative feedback for deeper insight into user experiences. ... Yuanxi Li and Paulina Pui Yun Wong. 2024. Exploring the Impact of Interactive Content on User Experiences within a
[150] The Impact of Content, Context, and Creator on User Engagement in ... — One approach to addressing this challenge is to use analytics on user-generated social media content to understand the relationship between content features and user engagement.
[152] Chapter 1: Biomedical Knowledge Integration - PMC - PubMed Central (PMC) — The scope of available biomedical knowledge collections that may be applied to assist in the integration and analysis of such data is growing at a rapid pace; The ability to apply such knowledge collections to translational bioinformatics analyses requires an understanding of the sources of such knowledge, and methods of applying them to
[153] Multimodal content analysis: expanding analytical approaches to content ... — Focusing on the multimodal aspects of the data being analyzed, including intermodal relationships, is an important distinction between traditional quantitative content analysis and early variants of qualitative content analysis methods (Schreier, 2012). This distinction sets our approaches apart from earlier work in content analysis.
[155] Multimodal Sentiment Analysis with Mutual Information-based ... — Multimodal sentiment analysis seeks to utilize various types of signals to identify underlying emotions and sentiments. A key challenge in this field lies in multimodal representation learning, which aims to develop effective methods for integrating multimodal features into cohesive representations. Recent advancements include two notable approaches: one focuses on decomposing multimodal
[161] The Role of User Feedback in Improving Software Quality and UX — The Role of User Feedback in Improving Software Quality and UX The Role of User Feedback in Improving Software Quality and UX By actively collecting, analyzing, and incorporating user feedback, software developers can gain insights into their users' needs, preferences, and pain points. In this blog post, we will explore the crucial role of user feedback in improving software quality and enhancing user experience. By involving users in the feedback loop, developers can gather insights at various stages of the software development lifecycle. User feedback is a powerful tool for improving software quality and enhancing user experience. User feedback not only helps build better software but also fosters strong customer relationships, loyalty, and trust.
[162] User Feedback's Role in Successful Software Development | MoldStud — The importance of user feedback in software development | MoldStud The importance of user feedback in software development As the software development industry continues to evolve, harnessing user feedback is essential for creating successful and user-friendly software products. By gathering and interpreting feedback data, software developers can gain valuable insights into how users perceive their product and make informed decisions on how to enhance the overall user experience. By actively listening to user feedback and making data-driven decisions, developers can continuously improve their software application and stay ahead of the competition. Incorporating feedback analysis into the development process is essential for creating successful software applications that meet the needs and expectations of users.
[163] Role of User Feedback in Design Thinking: Strategies and Analysis — Embracing Iterative Design. Iterative design, influenced by user feedback, ensures products evolve according to user needs. This approach can increase product adaptability and user satisfaction. For instance, iterative design methods reduce time-to-market by up to 30%, according to a report from the Harvard Business Review. Real-World Application
[164] User Feedback: A Design Tool for Continuous Improvement — This iterative approach fosters a user-centered design philosophy, where the end-users' needs and preferences are at the forefront of the development process. Effective user feedback helps in: Identifying Pain Points: Users often encounter challenges or difficulties while interacting with a product or service.
[167] Content Analysis | Guide, Methods & Examples - Scribbr — Content analysis is a research method used to identify patterns in recorded communication. To conduct content analysis, you systematically collect data from a set of texts, which can be written, oral, or visual: Books, newspapers and magazines Speeches and interviews Web content and social media posts Photographs and films Content analysis can be both quantitative (focused on counting and measuring) and qualitative (focused on interpreting and understanding). In both types, you categorize or “code” words, themes, and concepts within the texts and then analyze the results. Researchers use content analysis to find out about the purposes, messages, and effects of communication content. Because content analysis can be applied to a broad range of texts, it is used in a variety of fields, including marketing, media studies, anthropology, cognitive science, psychology, and many social science disciplines.
[168] Content Analysis Disadvantages to Consider - Insight7 — Content analysis limitations in research can significantly affect the quality and reliability of findings. While this method allows for systematic examination of communication, it is often subject to various biases. ... Limited contextual understanding is a significant challenge when conducting content analysis. While this method can reveal
[169] Sociological Content Analysis | EBSCO Research Starters — Ensuring high inter-rater reliability and content validity is crucial for the credibility of the findings, as the interpretations can be influenced by individual biases. While content analysis offers benefits such as unobtrusiveness and the ability to analyze historical data, it does have limitations, including potential biases from researchers
[170] Understanding Reliability in Content Analysis - Insight7 — Content Analysis Reliability is crucial for validating research outcomes in qualitative studies. When analyzing text, sound, or visual media, ensuring that findings are consistent and reproducible becomes paramount. ... First, implementing a structured coding framework can help standardize the analysis process, reducing individual bias. Second
[172] How To Conduct Content Analysis: A Comprehensive Guide - Mind the Graph ... — Content analysis, a diverse research method, provides an organized approach for dissecting and comprehending communication in its multiple forms. ... and be transparent about any limitations or biases in your analysis. ... disciplinary perspectives, or preconceived notions about the topic under study. Implement strategies to mitigate bias, such
[174] From Data Collection to Analysis: How to Minimize Bias in Your Data ... — There are several tools that can be used to detect and eliminate bias in data science projects. Bias Detection Tools: These tools use algorithms to detect potential biases in data sets and can be used to identify potential sources of bias in data science projects. - Google’s What-If Tool: This is an open-source tool that helps data scientists visualize the behavior of their models and detect any biases in the data. Data Quality Assessment Tools: These tools can be used to assess the quality of the data used in a data science project and can be used to identify potential sources of data quality bias. Algorithm Evaluation Tools: These tools can be used to evaluate the performance of algorithms used in data science projects and can be used to identify potential sources of algorithmic bias.
[202] Design Thinking: from Bibliometric Analysis to Content Analysis ... — To understand the future research directions, content analysis of recent articles (published in 2019, 2020, and 2021) and content analysis of the selected articles which were featured in 16 clusters have been done. The analysis of future research directions is given below. Entrepreneurship Education-Related Research Gap
[203] PDF — A second interesting direction for text-based linguistic content analysis comes from the world of artificial intelligence (AI). The AI community is engaged in text-based content analysis as well in its efforts to create realistic "bots." There are annual competitions in which programmers
[204] Advancing multimodal teaching: a bibliometric and content analysis of ... — To address the limitations of the traditional literature review, this study employs both content analysis and bibliometric analysis to investigate global research publications in multimodal teaching. In addition, CiteSpace’s clustering and keyword co-occurrence analysis tools were applied to help identify key research themes, hotspots, and influential publications in the field of multimodal teaching (Synnestvedt et al. Based on the quantitative analysis of co-occurrence and emergence of high-frequency keywords and citations, the highly cited and emerging high attention literature in the existing research achievements are deeply studied, to more comprehensively explore the important content in the multimodal teaching research field through the content analysis. This study employed bibliometric analysis and content analysis to explore the research trends and key developments in multimodal teaching, analyzing 689 documents from 1995 to 2023.
[207] Methodologies for Digital Discourse Analysis — It allows researchers to analyze online content, such as social media posts and forums, to uncover patterns, themes, and trends in digital communication. Content analysis of digital media is a versatile and powerful methodology for uncovering patterns, themes, and trends in online discourse. Content analysis enables systematic examination of digital texts, digital ethnography provides insights into virtual communities, and corpus linguistics allows for the analysis of large text corpora. What are some applications of corpus linguistics in digital discourse analysis?Applications of corpus linguistics in digital discourse analysis include examining how specific words or phrases are used in online discussions, identifying changes in language use over time, and analyzing discourse related to particular events or topics.
[208] PDF — Volume 9, Issue 7, July – 2024 International Journal of Innovative Science and Research Technology ISSN No:-2456-2165 https://doi.org/10.38124/ijisrt/IJISRT24JUL927 IJISRT24JUL927 www.ijisrt.com 998 The Impact of Artificial Intelligence on Digital Media Content Creation Dr. Abuelainin Hussain, University of Bharain Abstract:- This study explores the impact of Artificial Intelligence (AI) on digital media, focusing on content creation, recommendation systems, and user engagement. Therefore, the problem statement of this research is to examine and analyse the impact of AI on content creation, recommendation systems, and user engagement in digital media, while understanding user perceptions, concerns, and the significance of transparency and trust in AI-driven technologies.
[210] Analyzing digital communication: a comprehensive literature review — The growing significance of digital communication creates new opportunities for both practice and research (e.g., Capriotti et al. Our insights relate to interdisciplinary research that draws on digital communication data, providing an overview for researchers in areas such as social sciences and communication (e.g., Paxton et al. Specifically, we contribute to the methodological discourse on the analysis of digital communication (e.g., Humphreys and Wang 2018), big data methodologies, and social media analytics (e.g., Stieglitz et al.
[213] When AI Gets It Wrong: Addressing AI Hallucinations and Bias — Navigate AI’s Pitfalls Conclusion References At a Glance Generative AI has the potential to transform higher education—but it’s not without its pitfalls. These technology tools can generate content that’s skewed or misleading (Generative AI Working Group, n.d.; Cano et al., 2023). They’ve been shown to produce images and text that perpetuate biases related to gender, race (Nicoletti & Bass, 2023), political affiliation (Heikkilä, 2023), and more. In short, the “hallucinations” and biases in generative AI outputs result from the nature of their training data, the tools’ design focus on pattern-based content generation, and the inherent limitations of AI technology.
[214] Tackling bias in artificial intelligence (and in humans) — The second is the opportunity to improve AI systems themselves, from how they leverage data to how they are developed, deployed, and used, to prevent them from perpetuating human and societal biases or creating bias and related challenges of their own. No optimization algorithm can resolve such questions, and no machine can be left to determine the right answers; it requires human judgment and processes, drawing on disciplines including social sciences, law, and ethics, to develop standards so that humans can deploy AI with bias and fairness in mind. As AI reveals more about human decision making, leaders can consider whether the proxies used in the past are adequate and how AI can help by surfacing long-standing biases that may have gone unnoticed.
[222] PDF — This chapter discusses several stages in the history of content analysis: quantitative studies of the press; propaganda analysis during World War II; social scientific uses of the technique in studies of political sym bols, historical documents, anthropological data, and psychotherapeutic exchanges; computer text analysis and the new media; and qualitative chal lenges to content analysis. (For this reason, I refer to these approaches as interactive-hermeneutic, a description that speaks to the process of engaging in systematic interpreta tions of text.) One could summarize and say that content analysis has evolved into a repertoire of methods of research that promise to yield inferences from all kinds of verbal, pictorial, symbolic, and communication data.