Signal Contrastive Enhanced Graph Collaborative Filtering for Recommendation

被引:0
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作者
Zhi-Yuan Li
Man-Sheng Chen
Yuefang Gao
Chang-Dong Wang
机构
[1] Sun Yat-sen University,School of Computer Science and Engineering
[2] Ministry of Education,Key Laboratory of Machine Intelligence and Advanced Computing
[3] South China Agricultural University,College of Mathematics and Informatics
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关键词
Recommendation; Collaborative filtering; Contrastive learning; Graph signals; Hypergraph learning;
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学科分类号
摘要
Graph collaborative filtering methods have shown great performance improvements compared with deep neural network-based models. However, these methods suffer from data sparsity and data noise problems. To address these issues, we propose a new contrastive learning-based graph collaborative filtering method to learn more robust representations. The proposed method is called signal contrastive enhanced graph collaborative filtering (SC-GCF), which conducts contrastive learning on graph signals. It has been proved that graph neural networks correspond to low-pass filters on the graph signals from the graph convolution perspective. Different from the previous contrastive learning-based methods, we first pay attention to the diversity of graph signals to directly optimize the informativeness of the graph signals. We introduce a hypergraph module to strengthen the representation learning ability of graph neural networks. The hypergraph learning module utilizes a learnable hypergraph structure to model the latent global dependency relations that graph neural networks cannot depict. Experiments are conducted on four public datasets, and the results show significant improvements compared with the state-of-the-art methods, which confirms the importance of considering signal-level contrastive learning and hypergraph learning.
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页码:318 / 328
页数:10
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