Publication | Open Access
Exploring syntactic features for relation extraction using a convolution tree kernel
110
Citations
11
References
2006
Year
Parse TreeSyntactic ParsingEngineeringRelation ExtractionCorpus LinguisticsConvolution KernelText MiningCausal Relation ExtractionNatural Language ProcessingSyntaxInformation RetrievalData ScienceComputational LinguisticsGrammarLanguage StudiesSyntactic FeaturesKnowledge DiscoveryInformation ExtractionSemantic ParsingShallow ParsingTreebanksConvolution Tree KernelRelationship ExtractionLinguistics
This paper proposes to use a convolution kernel over parse trees to model syntactic structure information for relation extraction. Our study reveals that the syntactic structure features embedded in a parse tree are very effective for relation extraction and these features can be well captured by the convolution tree kernel. Evaluation on the ACE 2003 corpus shows that the convolution kernel over parse trees can achieve comparable performance with the previous best-reported feature-based methods on the 24 ACE relation subtypes. It also shows that our method significantly outperforms the previous two dependency tree kernels on the 5 ACE relation major types.
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