Contextualized Word Embeddings Encode Aspects of Human-Like Word Sense Knowledge
October 25, 2020 ยท Declared Dead ยท ๐ Workshop on Cognitive Aspects of the Lexicon
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Authors
Sathvik Nair, Mahesh Srinivasan, Stephan Meylan
arXiv ID
2010.13057
Category
cs.CL: Computation & Language
Citations
37
Venue
Workshop on Cognitive Aspects of the Lexicon
Last Checked
4 months ago
Abstract
Understanding context-dependent variation in word meanings is a key aspect of human language comprehension supported by the lexicon. Lexicographic resources (e.g., WordNet) capture only some of this context-dependent variation; for example, they often do not encode how closely senses, or discretized word meanings, are related to one another. Our work investigates whether recent advances in NLP, specifically contextualized word embeddings, capture human-like distinctions between English word senses, such as polysemy and homonymy. We collect data from a behavioral, web-based experiment, in which participants provide judgments of the relatedness of multiple WordNet senses of a word in a two-dimensional spatial arrangement task. We find that participants' judgments of the relatedness between senses are correlated with distances between senses in the BERT embedding space. Homonymous senses (e.g., bat as mammal vs. bat as sports equipment) are reliably more distant from one another in the embedding space than polysemous ones (e.g., chicken as animal vs. chicken as meat). Our findings point towards the potential utility of continuous-space representations of sense meanings.
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