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Enhancing the Context Representation in Similarity-based Word Sense Disambiguation

2021-11-01EMNLP 2021Unverified0· sign in to hype

Ming Wang, Jianzhang Zhang, Yinglin Wang

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Abstract

In previous similarity-based WSD systems, studies have allocated much effort on learning comprehensive sense embeddings using contextual representations and knowledge sources. However, the context embedding of an ambiguous word is learned using only the sentence where the word appears, neglecting its global context. In this paper, we investigate the contribution of both word-level and sense-level global context of an ambiguous word for disambiguation. Experiments have shown that the Context-Oriented Embedding (COE) can enhance a similarity-based system’s performance on WSD by relatively large margins, achieving state-of-the-art on all-words WSD benchmarks in knowledge-based category.

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