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An expert‐in‐the‐loop method for domain‐specific document categorization based on small training data

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Listed:
  • Kanyao Han
  • Rezvaneh Rezapour
  • Katia Nakamura
  • Dikshya Devkota
  • Daniel C. Miller
  • Jana Diesner

Abstract

Automated text categorization methods are of broad relevance for domain experts since they free researchers and practitioners from manual labeling, save their resources (e.g., time, labor), and enrich the data with information helpful to study substantive questions. Despite a variety of newly developed categorization methods that require substantial amounts of annotated data, little is known about how to build models when (a) labeling texts with categories requires substantial domain expertise and/or in‐depth reading, (b) only a few annotated documents are available for model training, and (c) no relevant computational resources, such as pretrained models, are available. In a collaboration with environmental scientists who study the socio‐ecological impact of funded biodiversity conservation projects, we develop a method that integrates deep domain expertise with computational models to automatically categorize project reports based on a small sample of 93 annotated documents. Our results suggest that domain expertise can improve automated categorization and that the magnitude of these improvements is influenced by the experts' understanding of categories and their confidence in their annotation, as well as data sparsity and additional category characteristics such as the portion of exclusive keywords that can identify a category.

Suggested Citation

  • Kanyao Han & Rezvaneh Rezapour & Katia Nakamura & Dikshya Devkota & Daniel C. Miller & Jana Diesner, 2023. "An expert‐in‐the‐loop method for domain‐specific document categorization based on small training data," Journal of the Association for Information Science & Technology, Association for Information Science & Technology, vol. 74(6), pages 669-684, June.
  • Handle: RePEc:bla:jinfst:v:74:y:2023:i:6:p:669-684
    DOI: 10.1002/asi.24714
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    1. Anthony Waldron & Daniel C. Miller & Dave Redding & Arne Mooers & Tyler S. Kuhn & Nate Nibbelink & J. Timmons Roberts & Joseph A. Tobias & John L. Gittleman, 2017. "Reductions in global biodiversity loss predicted from conservation spending," Nature, Nature, vol. 551(7680), pages 364-367, November.
    2. Grimmer, Justin & Stewart, Brandon M., 2013. "Text as Data: The Promise and Pitfalls of Automatic Content Analysis Methods for Political Texts," Political Analysis, Cambridge University Press, vol. 21(3), pages 267-297, July.
    3. Margaret Roberts & Brandon Stewart & Tingley, Dustin & Edoardo Airoldi, 2013. "The structural topic model and applied social science," Working Paper 132666, Harvard University OpenScholar.
    4. Nikhil Garg & Londa Schiebinger & Dan Jurafsky & James Zou, 2018. "Word embeddings quantify 100 years of gender and ethnic stereotypes," Proceedings of the National Academy of Sciences, Proceedings of the National Academy of Sciences, vol. 115(16), pages 3635-3644, April.
    5. Miller, Daniel C., 2014. "Explaining Global Patterns of International Aid for Linked Biodiversity Conservation and Development," World Development, Elsevier, vol. 59(C), pages 341-359.
    6. Arho Suominen & Hannes Toivanen, 2016. "Map of science with topic modeling: Comparison of unsupervised learning and human-assigned subject classification," Journal of the Association for Information Science & Technology, Association for Information Science & Technology, vol. 67(10), pages 2464-2476, October.
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