Sciweavers

AIRS
2008
Springer

Study of Kernel-Based Methods for Chinese Relation Extraction

14 years 7 months ago
Study of Kernel-Based Methods for Chinese Relation Extraction
Abstract. In this paper, we mainly explore the effectiveness of two kernelbased methods, the convolution tree kernel and the shortest path dependency kernel, for Chinese relation extraction based on ACE 2007 corpus. For the convolution kernel, the performances of different parse tree spans involved in it for relation extraction are studied. Then, experiments with composite kernels, which are a combination of the convolution kernel and feature-based kernels are presented in order to discuss the complementary effects between tree kernel and flat kernels. For the shortest path dependency kernel, we improve it by replacing the strict same length requirement with finding the longest common subsequences between two shortest dependency paths. Experiments show kernel-based methods are effective for Chinese relation extraction.
Ruihong Huang, Le Sun, Yuanyong Feng
Added 01 Jun 2010
Updated 01 Jun 2010
Type Conference
Year 2008
Where AIRS
Authors Ruihong Huang, Le Sun, Yuanyong Feng
Comments (0)