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HICode: Hierarchical Inductive Coding with LLMs

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Despite numerous applications for fine-grained corpus analysis, researchers continue to rely on manual labeling, which does not scale, or statistical tools like topic modeling, which are difficult to control. We propose that LLMs have the potential to scale the nuanced analyses that researchers typically conduct manually to large text corpora. To this effect, inspired by qualitative research methods, we develop HICode, a two-part pipeline that first inductively generates labels directly from analysis data and then hierarchically clusters them to surface emergent themes. We validate this approach across three diverse datasets by measuring alignment with human-constructed themes and demonstrating its robustness through automated and human evaluations. Finally, we conduct a case study of litigation documents related to the ongoing opioid crisis in the U.S., revealing aggressive marketing strategies employed by pharmaceutical companies and demonstrating HICode's potential for facilitating nuanced analyses in large-scale data.

Mian Zhong, Pristina Wang, Anjalie Field• 2025

Related benchmarks

TaskDatasetResultRank
Thematic AnalysisDreaddit
Composite Quality Score0.436
8
Thematic AnalysisSheffield
Composite Quality Score0.496
8
Thematic AnalysisAli
Composite Quality Score42.1
8
Thematic AnalysisAAOCA
Composite Quality Score0.412
8
Thematic AnalysisSV-CHD
Composite Quality Score0.378
8
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