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MCMH: Learning Multi-Chain Multi-Hop Rules for Knowledge Graph Reasoning

2020-10-05 01:32:20
Lu Zhang, Mo Yu, Tian Gao, Yue Yu

Abstract

Multi-hop reasoning approaches over knowledge graphs infer a missing relationship between entities with a multi-hop rule, which corresponds to a chain of relationships. We extend existing works to consider a generalized form of multi-hop rules, where each rule is a set of relation chains. To learn such generalized rules efficiently, we propose a two-step approach that first selects a small set of relation chains as a rule and then evaluates the confidence of the target relationship by jointly scoring the selected chains. A game-theoretical framework is proposed to this end to simultaneously optimize the rule selection and prediction steps. Empirical results show that our multi-chain multi-hop (MCMH) rules result in superior results compared to the standard single-chain approaches, justifying both our formulation of generalized rules and the effectiveness of the proposed learning framework.

Abstract (translated)

URL

https://arxiv.org/abs/2010.01735

PDF

https://arxiv.org/pdf/2010.01735.pdf


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