Improved Knowledge Base Completion by the Path-Augmented TransR Model.

Lecture Notes in Artificial Intelligence(2017)

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摘要
Knowledge base completion aims to infer new relations from existing information. In this paper, we propose path-augmented TransR (PTransR) model to improve the accuracy of link prediction. In our approach, we build PTransR based on TransR, which is the best one-hop model at present. Then we regularize TransR with information of relation paths. In our experiment, we evaluate PTransR on the task of entity prediction. Experimental results show that PTransR outperforms previous models.
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关键词
Knowledge base completion,Relation path,Link prediction
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