Enhancing Sequential Recommendation with Graph Contrastive Learning
- URL: http://arxiv.org/abs/2205.14837v1
- Date: Mon, 30 May 2022 03:53:31 GMT
- Title: Enhancing Sequential Recommendation with Graph Contrastive Learning
- Authors: Yixin Zhang, Yong Liu, Yonghui Xu, Hao Xiong, Chenyi Lei, Wei He,
Lizhen Cui, Chunyan Miao
- Abstract summary: This paper proposes a novel sequential recommendation framework, namely Graph Contrastive Learning for Sequential Recommendation (GCL4SR)
GCL4SR employs a Weighted Item Transition Graph (WITG), built based on interaction sequences of all users, to provide global context information for each interaction and weaken the noise information in the sequence data.
Experiments on real-world datasets demonstrate that GCL4SR consistently outperforms state-of-the-art sequential recommendation methods.
- Score: 64.05023449355036
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The sequential recommendation systems capture users' dynamic behavior
patterns to predict their next interaction behaviors. Most existing sequential
recommendation methods only exploit the local context information of an
individual interaction sequence and learn model parameters solely based on the
item prediction loss. Thus, they usually fail to learn appropriate sequence
representations. This paper proposes a novel recommendation framework, namely
Graph Contrastive Learning for Sequential Recommendation (GCL4SR).
Specifically, GCL4SR employs a Weighted Item Transition Graph (WITG), built
based on interaction sequences of all users, to provide global context
information for each interaction and weaken the noise information in the
sequence data. Moreover, GCL4SR uses subgraphs of WITG to augment the
representation of each interaction sequence. Two auxiliary learning objectives
have also been proposed to maximize the consistency between augmented
representations induced by the same interaction sequence on WITG, and minimize
the difference between the representations augmented by the global context on
WITG and the local representation of the original sequence. Extensive
experiments on real-world datasets demonstrate that GCL4SR consistently
outperforms state-of-the-art sequential recommendation methods.
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