CLSep 23, 2019

Does BERT Make Any Sense? Interpretable Word Sense Disambiguation with Contextualized Embeddings

arXiv:1909.10430v2201 citations
Originality Incremental advance
AI Analysis

This addresses the problem of interpreting word senses in NLP, showing incremental gains for specific tasks.

The paper tackled word sense disambiguation by using a nearest neighbor classification on contextualized word embeddings, reporting improvements above the state of the art on two standard benchmark datasets.

Contextualized word embeddings (CWE) such as provided by ELMo (Peters et al., 2018), Flair NLP (Akbik et al., 2018), or BERT (Devlin et al., 2019) are a major recent innovation in NLP. CWEs provide semantic vector representations of words depending on their respective context. Their advantage over static word embeddings has been shown for a number of tasks, such as text classification, sequence tagging, or machine translation. Since vectors of the same word type can vary depending on the respective context, they implicitly provide a model for word sense disambiguation (WSD). We introduce a simple but effective approach to WSD using a nearest neighbor classification on CWEs. We compare the performance of different CWE models for the task and can report improvements above the current state of the art for two standard WSD benchmark datasets. We further show that the pre-trained BERT model is able to place polysemic words into distinct 'sense' regions of the embedding space, while ELMo and Flair NLP do not seem to possess this ability.

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