articleOct 19, 2020GREEN OA

S3-Rec: Self-Supervised Learning for Sequential Recommendation with Mutual Information Maximization

KZKun ZhouHWHui WangWXWayne Xin ZhaoYZYutao ZhuSWSirui Wang

Renmin University of China · Université de Montréal

Indexed inarxivcrossref

Abstract

Recently, significant progress has been made in sequential recommendation with deep learning. Existing neural sequential recommendation models usually rely on the item prediction loss to learn model parameters or data representations. However, the model trained with this loss is prone to suffer from data sparsity problem. Since it overemphasizes the final performance, the association or fusion between context data and sequence data has not been well captured and utilized for sequential recommendation.

Citation impact

702
total citations
FWCI
79.08
Percentile
100%
References
8
Citations per year

Authors

8
  • KZ
    Kun ZhouCorresponding

    Renmin University of China

  • HW
    Hui Wang

    Renmin University of China

  • WX
    Wayne Xin Zhao

    Renmin University of China

  • YZ
    Yutao Zhu

    Université de Montréal

  • SW
    Sirui Wang

Topics & keywords

Keywords
  • Context (archaeology)
  • Mutual information
  • Sequence (biology)
  • Artificial neural network
  • Deep learning
  • Maximization
  • Context model
  • Information loss
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