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Reasoning Like Human: Hierarchical Reinforcement Learning for Knowledge Graph Reasoning

Guojia Wan, Shirui Pan, Gong Chen, Chuan Zhou, Gholamreza Haffari

202090 citationsDOIOpen Access PDF

Abstract

Knowledge Graphs typically suffer from incompleteness. A popular approach to knowledge graph completion is to infer missing knowledge by multihop reasoning over the information found along other paths connecting a pair of entities. However, multi-hop reasoning is still challenging because the reasoning process usually experiences multiple semantic issue that a relation or an entity has multiple meanings. In order to deal with the situation, we propose a novel Hierarchical Reinforcement Learning framework to learn chains of reasoning from a Knowledge Graph automatically. Our framework is inspired by the hierarchical structure through which human handle cognitionally ambiguous cases. The whole reasoning process is decomposed into a hierarchy of two-level Reinforcement Learning policies for encoding historical information and learning structured action space. As a consequence, it is more feasible and natural for dealing with the multiple semantic issue. Experimental results show that our proposed model achieves substantial improvements in ambiguous relation tasks.

Topics & Concepts

Computer scienceReinforcement learningArtificial intelligenceGraphHierarchyKnowledge graphCommonsense reasoningOpportunistic reasoningKnowledge representation and reasoningModel-based reasoningMachine learningTheoretical computer scienceMarket economyEconomicsAdvanced Graph Neural NetworksTopic ModelingDomain Adaptation and Few-Shot Learning