Generative Large Language Models (gLLMs) in Content Analysis: A Practical Guide for Communication Research
- URL: http://arxiv.org/abs/2510.24337v1
- Date: Tue, 28 Oct 2025 12:01:43 GMT
- Title: Generative Large Language Models (gLLMs) in Content Analysis: A Practical Guide for Communication Research
- Authors: Daria Kravets-Meinke, Hannah Schmid-Petri, Sonja Niemann, Ute Schmid,
- Abstract summary: Generative Large Language Models (gLLMs) are increasingly being used in communication research for content analysis.<n>Despite their potential, the integration of gLLMs into the methodological toolkit of communication research remains underdeveloped.<n>This paper synthesizes emerging research on gLLM-assisted quantitative content analysis and proposes a comprehensive best-practice guide to navigate these challenges.
- Score: 2.390467032220061
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Generative Large Language Models (gLLMs), such as ChatGPT, are increasingly being used in communication research for content analysis. Studies show that gLLMs can outperform both crowd workers and trained coders, such as research assistants, on various coding tasks relevant to communication science, often at a fraction of the time and cost. Additionally, gLLMs can decode implicit meanings and contextual information, be instructed using natural language, deployed with only basic programming skills, and require little to no annotated data beyond a validation dataset - constituting a paradigm shift in automated content analysis. Despite their potential, the integration of gLLMs into the methodological toolkit of communication research remains underdeveloped. In gLLM-assisted quantitative content analysis, researchers must address at least seven critical challenges that impact result quality: (1) codebook development, (2) prompt engineering, (3) model selection, (4) parameter tuning, (5) iterative refinement, (6) validation of the model's reliability, and optionally, (7) performance enhancement. This paper synthesizes emerging research on gLLM-assisted quantitative content analysis and proposes a comprehensive best-practice guide to navigate these challenges. Our goal is to make gLLM-based content analysis more accessible to a broader range of communication researchers and ensure adherence to established disciplinary quality standards of validity, reliability, reproducibility, and research ethics.
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