• Title of article

    Exploring syntactic structured features over parse trees for relation extraction using kernel methods

  • Author/Authors

    Min Zhang، نويسنده , , GuoDong Zhou، نويسنده , , Aiti Aw، نويسنده ,

  • Issue Information
    دوماهنامه با شماره پیاپی سال 2008
  • Pages
    15
  • From page
    687
  • To page
    701
  • Abstract
    Extracting semantic relationships between entities from text documents is challenging in information extraction and important for deep information processing and management. This paper proposes to use the convolution kernel over parse trees together with support vector machines to model syntactic structured information for relation extraction. Compared with linear kernels, tree kernels can effectively explore implicitly huge syntactic structured features embedded in a parse tree. Our study reveals that the syntactic structured features embedded in a parse tree are very effective in relation extraction and can be well captured by the convolution tree kernel. Evaluation on the ACE benchmark corpora shows that using the convolution tree kernel only can achieve comparable performance with previous best-reported feature-based methods. It also shows that our method significantly outperforms previous two dependency tree kernels for relation extraction. Moreover, this paper proposes a composite kernel for relation extraction by combining the convolution tree kernel with a simple linear kernel. Our study reveals that the composite kernel can effectively capture both flat and structured features without extensive feature engineering, and easily scale to include more features. Evaluation on the ACE benchmark corpora shows that the composite kernel outperforms previous best-reported methods in relation extraction.
  • Keywords
    Relation extraction , Information extraction , Syntactic structured features , Convolution tree kernel , Composite kernel
  • Journal title
    Information Processing and Management
  • Serial Year
    2008
  • Journal title
    Information Processing and Management
  • Record number

    1228756