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Word Embedding 자질을 이용한 한국어 개체명 인식 및 분류
최윤수(Yunsu Choi),차정원(Jeongwon Cha) Korean Institute of Information Scientists and Eng 2016 정보과학회논문지 Vol.43 No.6
Named Entity Recognition and Classification (NERC) is a task for recognition and classification of named entities such as a persons name, location, and organization. There have been various studies carried out on Korean NERC, but they have some problems, for example lacking some features as compared with English NERC. In this paper, we propose a method that uses word embedding as features for Korean NERC. We generate a word vector using a Continuous-Bag-of- Word (CBOW) model from POS-tagged corpus, and a word cluster symbol using a K-means algorithm from a word vector. We use the word vector and word cluster symbol as word embedding features in Conditional Random Fields (CRFs). From the result of the experiment, performance improved 1.17%, 0.61% and 1.19% respectively for TV domain, Sports domain and IT domain over the baseline system. Showing better performance than other NERC systems, we demonstrate the effectiveness and efficiency of the proposed method.