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Title: 

Practical, Efficient, and Customizable Active Learning for Named Entity Recognition in the Digital Humanities

Authors: Erdmann, Alexander
Wrisley, David Joseph
Brown, Christopher
Cohen-Bodénès, Sophie
Elsner, Micha
Feng, Yukun
Joseph, Brian
Joyeux-Prunel, Béatrice
de Marneffe, Marie-Catherine
Keywords: digital humanities;named entity recognition;active learning;machine learning
Issue Date: 2019
Publisher: Association for Computational Linguistics
Citation: Erdmann, A. et al. (2019) Practical, Efficient, and Customizable Active Learning for Named Entity Recognition in the Digital Humanities. Proceedings of NAACL-HLT 2019, pages 2223–2234 Minneapolis, Minnesota, June 2 - June 7, 2019.
Abstract: Scholars in inter-disciplinary fields like the Digital Humanities are increasingly interested in semantic annotation of specialized corpora. Yet, under-resourced languages, imperfect or noisily structured data, and user-specific classification tasks make it difficult to meet their needs using off-the-shelf models. Manual annotation of large corpora from scratch, meanwhile, can be prohibitively expensive. Thus, we propose an active learning solution for named entity recognition, attempting to maximize a custom model’s improvement per additional unit of manual annotation. Our system robustly handles any domain or user-defined label set and requires no external resources, enabling quality named entity recognition for Humanities corpora where such resources are not available. Evaluating on typologically disparate languages and datasets, we reduce required annotation by 20-60% and greatly outperform a competitive active learning baseline.
URI: https://www.aclweb.org/anthology/N19-1231
http://hdl.handle.net/2451/60381
Appears in Collections:David Wrisley's Collection

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