JOURNAL ARTICLE

Leveraging Word-Formation Knowledge for Chinese Word Sense Disambiguation

Abstract

In parataxis languages like Chinese, word meanings are constructed using specific wordformations, which can help to disambiguate word senses.However, such knowledge is rarely explored in previous word sense disambiguation (WSD) methods.In this paper, we propose to leverage word-formation knowledge to enhance Chinese WSD.We first construct a large-scale Chinese lexical sample WSD dataset with word-formations.Then, we propose a model FormBERT to explicitly incorporate word-formations into sense disambiguation.To further enhance generalizability, we design a word-formation predictor module in case word-formation annotations are unavailable.Experimental results show that our method brings substantial performance improvement over strong baselines.

Keywords:
Word-sense disambiguation Leverage (statistics) Word (group theory) Construct (python library) Sample (material) SemEval

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Topics

Natural Language Processing Techniques
Physical Sciences →  Computer Science →  Artificial Intelligence
Topic Modeling
Physical Sciences →  Computer Science →  Artificial Intelligence
Language and cultural evolution
Social Sciences →  Social Sciences →  Cultural Studies

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