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Multi-level Recommendation Reasoning over Knowledge Graphs with Reinforcement Learning

Xiting Wang, Kunpeng Liu, Dongjie Wang, Le Wu, Yanjie Fu, Xing Xie

2022Proceedings of the ACM Web Conference 202293 citationsDOI

Abstract

Knowledge graphs (KGs) have been widely used to improve recommendation accuracy. The multi-hop paths on KGs also enable recommendation reasoning, which is considered a crystal type of explainability. In this paper, we propose a reinforcement learning framework for multi-level recommendation reasoning over KGs, which leverages both ontology-view and instance-view KGs to model multi-level user interests. This framework ensures convergence to a more satisfying solution by effectively transferring high-level knowledge to lower levels. Based on the framework, we propose a multi-level reasoning path extraction method, which automatically selects between high-level concepts and low-level ones to form reasoning paths that better reveal user interests. Experiments on three datasets demonstrate the effectiveness of our method.

Topics & Concepts

Computer scienceOntologyPath (computing)Reinforcement learningCollaborative filteringArtificial intelligenceConvergence (economics)Recommender systemKnowledge graphInformation retrievalMachine learningProgramming languageEpistemologyEconomic growthPhilosophyEconomicsRecommender Systems and TechniquesAdvanced Graph Neural NetworksTopic Modeling
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