Hierarchical Fuzzy Graph Attention Network for Group Recommendation

Ru-xia Liang, Qian Zhang, Jianqiang Wang
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引用次数: 1

Abstract

Human's group activities have contributed to the development of group recommender systems. The group recommender system can provide personalised services for various online user groups through analysing groups' preferences. However, current group recommendation methods have failed to exploit complex relationships among users, groups and items when extracting groups' preferences. Meanwhile, most previous works are based on crisp techniques, which result in rigid preference profiling. Benefiting from the development of graph attention networks, this paper represents the complex relationships among users, groups and items as various graphs, including user-/group-item graph, user-group graph and user-user graph, and proposes a hierarchical fuzzy graph attention network (HGAT-F) to enhance fuzzy profiling for both groups and items. Experiments results on real world datasets show that HGAT-F has enhanced group recommendation than previous works.
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群体推荐的层次模糊图关注网络
人类的群体活动促进了群体推荐系统的发展。群体推荐系统通过分析群体的偏好,为不同的在线用户群体提供个性化的服务。然而,目前的群组推荐方法在提取群组偏好时,未能利用用户、群组和项目之间的复杂关系。与此同时,以往的作品大多是基于清晰的技术,这导致了僵化的偏好分析。借鉴图注意网络的发展,将用户、组和项目之间的复杂关系表示为用户-组-项目图、用户-组图和用户-用户图,提出了一种层次模糊图注意网络(HGAT-F),以增强对组和项目的模糊分析。在真实数据集上的实验结果表明,HGAT-F算法在分组推荐方面比以往的研究成果有了显著的提高。
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