群组推荐的超图卷积网络

Renqi Jia, Xiaofei Zhou, Linhua Dong, Shirui Pan
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引用次数: 14

摘要

群体活动已经成为人们日常生活中必不可少的一部分,这激发了对群体推荐任务的深入研究需求,即向一群用户推荐物品。大多数现有的工作都集中在聚合用户在组内的兴趣,以了解组偏好。这些方法都面临着两个问题。首先,这些方法只对单个组内的用户偏好进行建模,而忽略了跨不同组的用户和项目之间的协作关系。第二,他们假设群体偏好是用户兴趣的集合,事实上群体可能追求一些并非来自用户兴趣的目标。因此,它们不足以模拟独立于现有用户兴趣的一般群体偏好。为了解决上述问题,我们提出了一种新的双通道超图卷积网络用于群体推荐(HCR),该网络由成员级偏好网络和群体级偏好网络组成。在成员级偏好网络中,为了捕捉用户和物品之间的跨群体协作连接,我们设计了一个成员级超图卷积网络来学习群体成员的个人偏好。在群体级偏好网络中,群体的一般偏好被基于群体相似度的群体级图卷积网络捕获。我们在两个真实世界的数据集上评估了我们的模型,实验结果表明,所提出的模型显著且始终优于最先进的群体推荐技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hypergraph Convolutional Network for Group Recommendation
Group activities have become an essential part of people’s daily life, which stimulates the requirement for intensive research on the group recommendation task, i.e., recommending items to a group of users. Most existing works focus on aggregating users’ interests within the group to learn group preference. These methods are faced with two problems. First, these methods only model the user preference inside a single group while ignoring the collaborative relations among users and items across different groups. Second, they assume that group preference is an aggregation of user interests, and factually a group may pursue some targets not derived from users’ interests. Thus they are insufficient to model the general group preferences which are independent of existing user interests. To address the above issues, we propose a novel dual channel Hypergraph Convolutional network for group Recommendation (HCR), which consists of member-level preference network and group-level preference network. In the member-level preference network, in order to capture cross-group collaborative connections among users and items, we devise a member-level hypergraph convolutional network to learn group members’ personal preferences. In the group-level preference network, the group’s general preference is captured by a group-level graph convolutional network based on group similarity. We evaluate our model on two real-world datasets and the experimental results show that the proposed model significantly and consistently outperforms state-of-the-art group recommendation techniques.
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