Simplified self-supervised learning for hybrid propagation graph-based recommendation.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

Recent progress in Graph Convolutional Networks (GCNs) has facilitated their extensive application in recommendation, yielding notable performance gains. Nevertheless, existing GCN-based recommendation approaches are confronted with several challenges: (1) how to effectively leverage multi-order graph connectivity to derive meaningful node embeddings; (2) faced with sparse raw data, how to augment supervision signals without relying on auxiliary information; (3) given that GCNs necessitate the aggregation of neighborhood nodes, and the sparsity of these nodes can exacerbate the impact of noise data, how to mitigate the noise problem inherent in the raw data. For tackling aforementioned challenges, we devise a new hybrid propagation GCN-based method named S3HGN, incorporating a simplified self-supervised learning paradigm for recommendation. Specifically, we introduce the concept of nonlinear propagation into the common linear GCN framework to explore both low-order and high-order hybrid connectivity relationships, and perform residual prediction through weighted summation. Furthermore, we design a simplified self-supervised learning strategy to construct auxiliary tasks, which creates contrastive views by directly applying dropout operation twice to the final representation, enhancing the model's robustness against noise data. Extensive experiments on three publicly available datasets, using eight representative graph-based collaborative filtering models, confirm the effectiveness and robustness of the proposed S3HGN.

Authors

  • Jianing Zhou
    School of Electrical Engineering, Shenyang University of Technology, Shenyang 110870, P. R. China.
  • Jie Liao
    Pharmaceutical Informatics Institute, College of Pharmaceutical Sciences, Zhejiang University, Hangzhou 310058, China.
  • Xi Zhu
    Department of Psychiatry, Columbia University Irving Medical Center and New York State Psychiatric Institute, New York, New York.
  • Junhao Wen
    Laboratory of AI and Biomedical Science (LABS), Stevens Neuroimaging and Informatics Institute, Keck School of Medicine of USC, University of Southern California, Los Angeles, California, USA.
  • Wei Zhou
    Department of Eye Function Laboratory, Eye Hospital, China Academy of Chinese Medical Sciences, Beijing, China.