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Different Tastes of Entities: Investigating Human Label Variation in Named Entity Annotations

Research identifies text ambiguity and guideline changes as major sources of variation in expert-annotated named entity datasets across multiple languages.

Year
2024
Venue
arXiv 2024
Authors
4
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arxiv.org/abs/2402.01423ARXIV-DEFAULT
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Abstract

Named Entity Recognition (NER) is a key information extraction task with a long-standing tradition. While recent studies address and aim to correct annotation errors via re-labeling efforts, little is known about the sources of human label variation, such as text ambiguity, annotation error, or guideline divergence. This is especially the case for high-quality datasets and beyond English CoNLL03. This paper studies disagreements in expert-annotated named entity datasets for three languages: English, Danish, and Bavarian. We show that text ambiguity and artificial guideline changes are dominant factors for diverse annotations among high-quality revisions. We survey student annotations on a subset of difficult entities and substantiate the feasibility and necessity of manifold annotations for understanding named entity ambiguities from a distributional perspective.

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4