[2603.19271] A Human-Centered Workflow for Using Large Language Models in Content Analysis
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Abstract page for arXiv paper 2603.19271: A Human-Centered Workflow for Using Large Language Models in Content Analysis
Computer Science > Computation and Language arXiv:2603.19271 (cs) [Submitted on 27 Feb 2026] Title:A Human-Centered Workflow for Using Large Language Models in Content Analysis Authors:Ivan Zupic View a PDF of the paper titled A Human-Centered Workflow for Using Large Language Models in Content Analysis, by Ivan Zupic View PDF Abstract:While many researchers use Large Language Models (LLMs) through chat-based access, their real potential lies in leveraging LLMs via application programming interfaces (APIs). This paper conceptualizes LLMs as universal text processing machines and presents a comprehensive workflow for employing LLMs in three qualitative and quantitative content analysis tasks: (1) annotation (an umbrella term for qualitative coding, labeling and text classification), (2) summarization, and (3) information extraction. The workflow is explicitly human-centered. Researchers design, supervise, and validate each stage of the LLM process to ensure rigor and transparency. Our approach synthesizes insights from extensive methodological literature across multiple disciplines: political science, sociology, computer science, psychology, and management. We outline validation procedures and best practices to address key limitations of LLMs, such as their black-box nature, prompt sensitivity, and tendency to hallucinate. To facilitate practical implementation, we provide supplementary materials, including a prompt library and Python code in Jupyter Notebook format, accomp...