安 波;韩先培;孙 乐;吴 健. 基于分布式表示和多特征融合的知识库三元组分类[J]. 中文信息学报, 2016, 30(6): 84-89.
AN Bo; HAN Xianpei; SUN Le; WU Jian. Triple Classification Based on Synthesized Features for Knowledge Base. , 2016, 30(6): 84-89.
基于分布式表示和多特征融合的知识库三元组分类
安 波;韩先培;孙 乐;吴 健
中国科学院 软件研究所 中文信息处理研究室,北京 100190
Triple Classification Based on Synthesized Features for Knowledge Base
AN Bo; HAN Xianpei; SUN Le; WU Jian
Laboratory of Chinese Information Processing, Institute of Software,
Chinese Academy of Sciences, Beijing 100190, China
Abstract:Triple classification is crucial for knowledge base completion and relation extraction. However, the state-of-the-art methods for triple classification fail to tackle 1-to-n, m-to-1 and m-to-n relations. In this paper, we propose TCSF (Triple Classification based on Synthesized Features) method, which can joint exploit the triple distance, the prior probability of relation, and the context compatibility between entity pair and relation for triple classification. Experimental results on four datasets (WN11, WN18, FB13, FB15K) show that TCSF can achieve significant improvement over TransE and other state-of-the-art triple classification approaches.
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