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The Insight-Inference Loop: Efficient Text Classification via Natural Language Inference and Threshold-Tuning

Author

Listed:
  • Sandrine Chausson
  • Marion Fourcade
  • David J. Harding
  • Björn Ross
  • Grégory Renard

Abstract

Modern computational text classification methods have brought social scientists tantalizingly close to the goal of unlocking vast insights buried in text data—from centuries of historical documents to streams of social media posts. Yet three barriers still stand in the way: the tedious labor of manual text annotation, the technical complexity that keeps these tools out of reach for many researchers, and, perhaps most critically, the challenge of bridging the gap between sophisticated algorithms and the deep theoretical understanding social scientists have already developed about human interactions, social structures, and institutions. To counter these limitations, we propose an approach to large-scale text analysis that requires substantially less human-labeled data, and no machine learning expertise, and efficiently integrates the social scientist into critical steps in the workflow. This approach, which allows the detection of statements in text, relies on large language models pre-trained for natural language inference, and a “few-shot†threshold-tuning algorithm rooted in active learning principles. We describe and showcase our approach by analyzing tweets collected during the 2020 U.S. presidential election campaign, and benchmark it against various computational approaches across three datasets.

Suggested Citation

  • Sandrine Chausson & Marion Fourcade & David J. Harding & Björn Ross & Grégory Renard, 2026. "The Insight-Inference Loop: Efficient Text Classification via Natural Language Inference and Threshold-Tuning," Sociological Methods & Research, , vol. 55(2), pages 568-615, May.
  • Handle: RePEc:sae:somere:v:55:y:2026:i:2:p:568-615
    DOI: 10.1177/00491241251326819
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    References listed on IDEAS

    as
    1. Laurer, Moritz & van Atteveldt, Wouter & Casas, Andreu & Welbers, Kasper, 2024. "Less Annotating, More Classifying: Addressing the Data Scarcity Issue of Supervised Machine Learning with Deep Transfer Learning and BERT-NLI," Political Analysis, Cambridge University Press, vol. 32(1), pages 84-100, January.
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