Computer ScienceData Mining and Knowledge Discovery
Multiple hypergraph convolutional network social recommendation using dual contrastive learning
H. Wang, W. Zhou, et al.
Harnessing higher-order social ties and contrastive learning, this paper proposes DCMHS: a dual-objective contrastive learning multiple hypergraph convolution model that builds hypergraphs from social relationships, obtains higher-order user representations via hypergraph convolution, refines them with neighbor and semantic contrastive objectives to avoid aggregation loss, and improves negative sampling using global item embeddings. Experiments on real-world datasets demonstrate the model's effectiveness. Research conducted by Hongyu Wang, Wei Zhou, Junhao Wen, and Shutong Qiao.
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