Self-supervised Graph Learning for Recommendation
Jiancan Wu, Xiang Wang, Fuli Feng, Xiangnan He, Liang Chen, Jianxun Lian, Xing Xie
Abstract
Representation learning on user-item graph for recommendation has evolved from using single ID or interaction history to exploiting higher-order neighbors. This leads to the success of graph convolution networks (GCNs) for recommendation such as PinSage and LightGCN. Despite effectiveness, we argue that they suffer from two limitations: (1) high-degree nodes exert larger impact on the representation learning, deteriorating the recommendations of low-degree (long-tail) items; and (2) representations are vulnerable to noisy interactions, as the neighborhood aggregation scheme further enlarges the impact of observed edges.
Topics & Concepts
Computer scienceGraphRepresentation (politics)Feature learningRecommender systemTheoretical computer scienceArtificial intelligenceConvolution (computer science)Scheme (mathematics)Machine learningDeep learningKnowledge representation and reasoningKnowledge graphGraph propertyGraph algorithmsInformation retrievalGraph theoryExternal Data RepresentationRecommender Systems and TechniquesAdvanced Graph Neural NetworksTopic Modeling