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Edge-enhanced global disentangled graph neural network for sequential recommendation

Yunyi Li, Yongjing Hao, Pengpeng Zhao*, Guanfeng Liu, Yanchi Liu, Victor S. Sheng, Xiaofang Zhou

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Sequential recommendation has been a widely popular topic of recommender systems. Existing works have contributed to enhancing the prediction ability of sequential recommendation systems based on various methods, such as recurrent networks and self-attention mechanisms. However, they fail to discover and distinguish various relationships between items, which could be underlying factors which motivate user behaviors. In this article, we propose an Edge-Enhanced Global Disentangled Graph Neural Network (EGD-GNN) model to capture the relation information between items for global item representation and local user intention learning. At the global level, we build a global-link graph over all sequences to model item relationships. Then a channel-aware disentangled learning layer is designed to decompose edge information into different channels, which can be aggregated to represent the target item from its neighbors. At the local level, we apply a variational auto-encoder framework to learn user intention over the current sequence. We evaluate our proposed method on three real-world datasets. Experimental results show that our model can get a crucial improvement over state-of-the-art baselines and is able to distinguish item features.

Original languageEnglish
Article number80
Pages (from-to)1-22
Number of pages22
JournalACM Transactions on Knowledge Discovery from Data
Volume17
Issue number6
DOIs
Publication statusPublished - Jul 2023

Keywords

  • Disentangled representation learning
  • graph
  • sequential recommendation

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