Affording Process Auditability with QualAnalyzer: An Atomistic LLM Analysis Tool for Qualitative Research

arXiv cs.AI / 4/7/2026

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Key Points

  • QualAnalyzer is introduced as an open-source Chrome extension for Google Workspace that enables “atomistic” LLM qualitative analysis by processing each data segment independently.
  • The tool preserves a complete record of prompts, inputs, and outputs for every segment, aiming to make LLM-assisted analytic conclusions reproducible and easier to audit.
  • The paper presents two case studies—holistic essay scoring and deductive thematic coding of interview transcripts—to demonstrate how the approach supports a transparent audit trail.
  • QualAnalyzer is positioned as a way to examine systematic differences between LLM-generated results and human judgments, improving methodological robustness for qualitative research.
  • The authors argue that process auditability is essential for increasing transparency when LLMs are used in qualitative research workflows.

Abstract

Large language models are increasingly used for qualitative data analysis, but many workflows obscure how analytic conclusions are produced. We present QualAnalyzer, an open-source Chrome extension for Google Workspace that supports atomistic LLM analysis by processing each data segment independently and preserving the prompt, input, and output for every unit. Through two case studies -- holistic essay scoring and deductive thematic coding of interview transcripts -- we show that this approach creates a legible audit trail and helps researchers investigate systematic differences between LLM and human judgments. We argue that process auditability is essential for making LLM-assisted qualitative research more transparent and methodologically robust.