AICLNov 12, 2025

Not Everything That Counts Can Be Counted: A Case for Safe Qualitative AI

arXiv:2511.09325v1h-index: 13
Originality Synthesis-oriented
AI Analysis

This work tackles the problem of integrating AI into qualitative methods for researchers in fields like social sciences, but it is incremental as it builds on existing automated discovery pipelines.

The paper addresses the gap in AI adoption for qualitative research, where current tools like ChatGPT are biased and opaque, and argues for developing dedicated qualitative AI systems that are transparent, reproducible, and privacy-friendly to enhance scientific discovery pipelines.

Artificial intelligence (AI) and large language models (LLM) are reshaping science, with most recent advances culminating in fully-automated scientific discovery pipelines. But qualitative research has been left behind. Researchers in qualitative methods are hesitant about AI adoption. Yet when they are willing to use AI at all, they have little choice but to rely on general-purpose tools like ChatGPT to assist with interview interpretation, data annotation, and topic modeling - while simultaneously acknowledging these system's well-known limitations of being biased, opaque, irreproducible, and privacy-compromising. This creates a critical gap: while AI has substantially advanced quantitative methods, the qualitative dimensions essential for meaning-making and comprehensive scientific understanding remain poorly integrated. We argue for developing dedicated qualitative AI systems built from the ground up for interpretive research. Such systems must be transparent, reproducible, and privacy-friendly. We review recent literature to show how existing automated discovery pipelines could be enhanced by robust qualitative capabilities, and identify key opportunities where safe qualitative AI could advance multidisciplinary and mixed-methods research.

Foundations

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