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3 months ago

Improved Word Sense Disambiguation with Enhanced Sense Representations

{Qian Lin Hwee Tou Ng Xin Cai Ong Yang song}

Improved Word Sense Disambiguation with Enhanced Sense Representations

Abstract

Current state-of-the-art supervised word sense disambiguation (WSD) systems (such as GlossBERT and bi-encoder model) yield surprisingly good results by purely leveraging pre-trained language models and short dictionary definitions (or glosses) of the different word senses. While concise and intuitive, the sense gloss is just one of many ways to provide information about word senses. In this paper, we focus on enhancing the sense representations via incorporating synonyms, example phrases or sentences showing usage of word senses, and sense gloss of hypernyms. We show that incorporating such additional information boosts the performance on WSD. With the proposed enhancements, our system achieves an F1 score of 82.0% on the standard benchmark test dataset of the English all-words WSD task, surpassing all previous published scores on this benchmark dataset.

Benchmarks

BenchmarkMethodologyMetrics
word-sense-disambiguation-on-supervisedESR
SemEval 2007: 77.0
SemEval 2013: 81.5
SemEval 2015: 84.1
Senseval 2: 81.3
Senseval 3: 79.9
word-sense-disambiguation-on-supervisedESR+WNGC
SemEval 2007: 78.5
SemEval 2013: 82.3
SemEval 2015: 85.3
Senseval 2: 82.5
Senseval 3: 80.2

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Improved Word Sense Disambiguation with Enhanced Sense Representations | Papers | HyperAI