One-Class Classification Model Based on Lexical Information and Syntactic Patterns 


Vol. 42,  No. 6, pp. 817-822, Jun.  2015


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  Abstract

Relation extraction is an important information extraction technique that can be widely used in areas such as question-answering and knowledge population. Previous studies on relation extraction have been based on supervised machine learning models that need a large amount of training data manually annotated with relation categories. Recently, to reduce the manual annotation efforts for constructing training data, distant supervision methods have been proposed. However, these methods suffer from a drawback: it is difficult to use these methods for collecting negative training data that are necessary for resolving classification problems. To overcome this drawback, we propose a one-class classification model that can be trained without using negative data. The proposed model determines whether an input data item is included in an inner category by using a similarity measure based on lexical information and syntactic patterns in a vector space. In the experiments conducted in this study, the proposed model showed higher performance (an F1-score of 0.6509 and an accuracy of 0.6833) than a representative one-class classification model, one-class SVM(Support Vector Machine).


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  Cite this article

[IEEE Style]

H. Lee, M. Choi, H. Kim, "One-Class Classification Model Based on Lexical Information and Syntactic Patterns," Journal of KIISE, JOK, vol. 42, no. 6, pp. 817-822, 2015. DOI: .


[ACM Style]

Hyeon-gu Lee, Maengsik Choi, and Harksoo Kim. 2015. One-Class Classification Model Based on Lexical Information and Syntactic Patterns. Journal of KIISE, JOK, 42, 6, (2015), 817-822. DOI: .


[KCI Style]

이현구, 최맹식, 김학수, "어휘 정보와 구문 패턴에 기반한 단일 클래스 분류 모델," 한국정보과학회 논문지, 제42권, 제6호, 817~822쪽, 2015. DOI: .


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