기본 정보
연구 분야
프로젝트
발행물
구성원
article|
gold
·인용수 12
·2020
Hybrid Sense Classification Method for Large-Scale Word Sense Disambiguation
Yoonseok Heo, Sangwoo Kang, Jungyun Seo
IF 3.6IEEE Access
초록

Word sense disambiguation (WSD) is a task of determining a reasonable sense of a word in a particular context. Although recent studies have demonstrated some progress in the advancement of neural language models, the scope of research is still such that the senses of several words can only be determined in a few domains. Therefore, it is necessary to move toward developing a highly scalable process that can address a lot of senses occurring in various domains. This paper introduces a new large WSD dataset that is automatically constructed from the Oxford Dictionary, which is widely used as a standard source for the meaning of words. We propose a new WSD model that individually determines the sense of the word in accordance with its part of speech in the context. In addition, we introduce a hybrid sense prediction method that separately classifies the less frequently used senses for achieving a reasonable performance. We have conducted comparative experiments to demonstrate that the proposed method is more reliable compared with the baseline approaches. Also, we investigated the adaptation of the method to a realistic environment with the use of news articles.

키워드
Computer scienceWord (group theory)Word-sense disambiguationNatural language processingSemEvalContext (archaeology)Artificial intelligenceScope (computer science)ScalabilityProcess (computing)
타입
article
IF / 인용수
3.6 / 12
게재 연도
2020