KDD2025
Your Graph Recommenders are Provably Doing Graph Contrastive Learning
Wenjie Yang, Shengzhong Zhang, Jiaxing Guo, Zengfeng Huang
摘要
Graph recommender (GR) is a type of graph neural network (GNN) encoder that is customized for extracting information from the user-item interaction graph. Due to its strong performance on the recommendation task, GR has gained significant attention recently. Graph contrastive learning (GCL) is also a popular research direction that aims to learn, often unsupervised, GNNs with certain contrastive objectives. As general graph representation learning methods, GCLs have been widely adopted with supervised recommendation loss for joint training of GRs. Despite the intersection of GR and GCL research, theoretical understanding of the relationship between the two fields is surprisingly sparse. This vacancy inevitably leads to inefficient scientific research.