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Lost in Context? On the Sense-wise Variance of Contextualized Word Embeddings (2208.09669v1)

Published 20 Aug 2022 in cs.CL

Abstract: Contextualized word embeddings in LLMs have given much advance to NLP. Intuitively, sentential information is integrated into the representation of words, which can help model polysemy. However, context sensitivity also leads to the variance of representations, which may break the semantic consistency for synonyms. We quantify how much the contextualized embeddings of each word sense vary across contexts in typical pre-trained models. Results show that contextualized embeddings can be highly consistent across contexts. In addition, part-of-speech, number of word senses, and sentence length have an influence on the variance of sense representations. Interestingly, we find that word representations are position-biased, where the first words in different contexts tend to be more similar. We analyze such a phenomenon and also propose a simple way to alleviate such bias in distance-based word sense disambiguation settings.

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Authors (2)
  1. Yile Wang (24 papers)
  2. Yue Zhang (620 papers)
Citations (1)

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