A Time and Relation-Aware Graph Collaborative Filtering for Cross-Domain Sequential Recommendation

被引:0
|
作者
Ren H. [1 ]
Liu B. [1 ]
Sun J. [1 ]
Dong Q. [1 ]
Qian J. [1 ]
机构
[1] Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo
来源
Jisuanji Yanjiu yu Fazhan/Computer Research and Development | 2023年 / 60卷 / 01期
基金
中国国家自然科学基金;
关键词
Cross-domain sequential recommendation; Data sparsity; Graph collaborative filter; Relation-aware graph attention mechanism; Time-aware graph attention mechanism;
D O I
10.7544/issn1000-1239.202110545
中图分类号
学科分类号
摘要
Cross-domain sequential recommendation aims to mine a given user's preferences from the historical interaction sequences in different domains and to predict the next item that the user is most likely to interact with among multiple domains, further to mitigate the impact of data sparsity on the capture and prediction for users' intents. Inspired by the idea of collaborative filtering, a time and relation-aware graph collaborative filtering for cross-domain sequential recommendation (TRaGCF) algorithm is proposed to solve the problem of data sparsity by uncovering users' high-order behavior patterns as well as utilizing the characteristics of bi-directional migration of user behavior patterns across domains. Firstly, we propose a time-aware graph attention (Ta-GAT) mechanism to obtain the cross-domain sequence-level item representation. Then, a user-item interaction bipartite graph in the domain is used to mine users' preferences, and a relation-aware graph attention (Ta-GAT) mechanism is proposed to learn item collaborative representation and user collaborative representation, which creates the foundation for cross-domain transfer of user preferences. Finally, to simultaneously improve the recommendation results in both domains, a user preference feature bi-directional transfer module (PBT) is proposed, transferring shared user preferences across domains and retaining specific preferences within one domain. The accuracy and effectiveness of our model are validated by two experimental datasets, Amazon Movie-Book and Food-Kitchen. The experimental results have demonstrated the necessity of considering intricate correlations between items in a cross-domain sequential recommendation scenario for mining users' intents, and the results also prove the importance of preserving users' specific preferences in creating a comprehensive user portrait when transferring users' preferences across domains. © 2023, Science Press. All right reserved.
引用
收藏
页码:112 / 124
页数:12
相关论文
共 38 条
  • [21] Chen Tianwen, Wong R C-W., Handling information loss of graph neural networks for session-based recommendation[C], Proc of the 26th ACM SIGKDD Int Conf on Knowledge Discovery & Data Mining, pp. 1172-1180, (2020)
  • [22] Xu Chengfeng, Zhao Pengpeng, Liu Yanchi, Et al., Graph contextualized self-attention network for session-based recommendation, Proc of the 28th Int Joint Conf on Artificial Intelligence, pp. 3940-3946, (2019)
  • [23] Zhihua Cui, Xu Xianghua, Fei Xue, Et al., Personalized recommendation system based on collaborative filtering for IoT scenarios[J], IEEE Transactions on Services Computing, 13, 4, (2020)
  • [24] Wang Ziyang, Wei Wei, Cong Gao, Et al., Global context enhanced graph neural networks for session-based recommendation[C], Proc of the 43rd Int ACM SIGIR Conf on Research and Development in Information Retrieval, pp. 169-178, (2020)
  • [25] Ma Chen, Ma Liheng, Zhang Yingxue, Et al., Memory augmented graph neural networks for sequential recommendation, Proc of the 34th AAAI Conf on Artificial Intelligence, 34, 3, pp. 5045-5052, (2020)
  • [26] Sarwar B, Karypis G, Konstan J, Et al., Item-based collaborative filtering recommendation algorithms[C], Proc of the 10th Int Conf on World Wide Web, pp. 285-295, (2001)
  • [27] Wu Yuexin, Liu Hanxiao, Yang Yiming, Graph convolutional matrix completion for bipartite edge prediction[C], Proc of the 10th Int Joint Conf on Knowledge Discovery, Knowledge Engineering and Knowledge Management, pp. 49-58, (2018)
  • [28] Wang Xiang, He Xiangnan, Wang Meng, Et al., Neural graph collaborative filtering[C], Pro of the 42nd Int ACM SIGIR Conf on Research and Development in Information Retrieval, pp. 165-174, (2019)
  • [29] Chen Lei, Wu Le, Hong Richang, Et al., Revisiting graph based collaborative filtering: A linear residual graph convolutional network approach[C], Proc of the 34th AAAI Conf on Artificial Intelligence, pp. 27-34, (2020)
  • [30] He Xiangnan, Deng Kuan, Wang Xiang, Et al., LightGCN: Simplifying and powering graph convolution network for recommendation[C], Proc of the 43rd Int ACM SIGIR Conf on Research and Development in Information Retrieval, pp. 639-648, (2020)