SimCGNN: Simple Contrastive Graph Neural Network for Session-based
Recommendation
- URL: http://arxiv.org/abs/2302.03997v1
- Date: Wed, 8 Feb 2023 11:13:22 GMT
- Title: SimCGNN: Simple Contrastive Graph Neural Network for Session-based
Recommendation
- Authors: Yuan Cao, Xudong Zhang, Fan Zhang, Feifei Kou, Josiah Poon, Xiongnan
Jin, Yongheng Wang and Jinpeng Chen
- Abstract summary: Session-based recommendation problem focuses on next-item prediction for anonymous users.
Existing graph-based SBR methods all lack the ability to differentiate between sessions with the same last item.
This paper presents a Simple Contrastive Graph Neural Network for Session-based Recommendation (SimCGNN)
- Score: 13.335104151715946
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Session-based recommendation (SBR) problem, which focuses on next-item
prediction for anonymous users, has received increasingly more attention from
researchers. Existing graph-based SBR methods all lack the ability to
differentiate between sessions with the same last item, and suffer from severe
popularity bias. Inspired by nowadays emerging contrastive learning methods,
this paper presents a Simple Contrastive Graph Neural Network for Session-based
Recommendation (SimCGNN). In SimCGNN, we first obtain normalized session
embeddings on constructed session graphs. We next construct positive and
negative samples of the sessions by two forward propagation and a novel
negative sample selection strategy, and then calculate the constructive loss.
Finally, session embeddings are used to give prediction. Extensive experiments
conducted on two real-word datasets show our SimCGNN achieves a significant
improvement over state-of-the-art methods.
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