A Novel Composite Kernel Approach to Chinese Entity Relation Extraction

COMPUTER PROCESSING OF ORIENTAL LANGUAGES: LANGUAGE TECHNOLOGY FOR THE KNOWLEDGE-BASED ECONOMY(2009)

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摘要
Relation extraction is the task of finding semantic relations between two entities from the text. In this paper, we propose a novel composite kernel for Chinese relation extraction. The composite kernel is defined as the combination of two independent kernels. One is the entity kernel built upon the non-content-related features. The other is the string semantic similarity kernel concerning the content information. Three combinations, namely linear combination, semi-polynomial combination and polynomial combination are investigated. When evaluated on the ACE 2005 Chinese data set, the results show that the proposed approach is effective.
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关键词
chinese relation extraction,linear combination,chinese data,novel composite kernel,independent kernel,polynomial combination,string semantic similarity kernel,composite kernel,novel composite kernel approach,chinese entity relation extraction,semi-polynomial combination,entity kernel,semantic similarity,relation extraction
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