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Disentangled Graph Collaborative Filtering

Xiang Wang, Hongye Jin, An Zhang, Xiangnan He, Tong Xu, Tat-Seng Chua

2020584 citationsDOIOpen Access PDF

Abstract

Learning informative representations of users and items from the interaction data is of crucial importance to collaborative filtering (CF). Present embedding functions exploit user-item relationships to enrich the representations, evolving from a single user-item instance to the holistic interaction graph. Nevertheless, they largely model the relationships in a uniform manner, while neglecting the diversity of user intents on adopting the items, which could be to pass time, for interest, or shopping for others like families. Such uniform approach to model user interests easily results in suboptimal representations, failing to model diverse relationships and disentangle user intents in representations.

Topics & Concepts

ExploitComputer scienceEmbeddingCollaborative filteringGraphTheoretical computer scienceDiversity (politics)Recommender systemUser modelingHuman–computer interactionData modelingArtificial intelligenceFunction (biology)Task analysisInformation retrievalData scienceFocus (optics)Recommender Systems and TechniquesAdvanced Graph Neural NetworksTopic Modeling
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