Multi-Graph Group Collaborative Filtering

Bo Jiang
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引用次数: 3

Abstract

The task of recommending an item or an event to a user group attracts wide attention. Most existing works obtain group preference by aggregating personalized preferences in the same group. However, the groups, users, and items are connected in a more complex structure, e.g.the users in the same group may have different preferences. Thus, it is important to introduce correlations among groups, users, and items into embedding learning. To address this problem, we propose Multi-Graph Group Collaborative Filtering (MGGCF), which refines the group, user and item representations according to three bipartite graphs. Moreover, since MGGCF refines the group, user and item embeddings simultaneously, it would benefit both the group recommendation tasks and the individual recommendation tasks. Extensive experiments are conducted on one real-world dataset and two synthetic datasets. Empirical results demonstrate that MGGCF significantly improves not only the group recommendation but also the item recommendation. Further analysis verifies the importance of embedding propagation for learning better user, group, item representations, which reveals the rationality and effectiveness of MGGCF.
多图组协同过滤
向用户群推荐一个项目或事件的任务引起了广泛的关注。大多数现有作品是通过聚合同一群体中的个性化偏好来获得群体偏好的。然而,组、用户和项目以更复杂的结构连接在一起,例如,同一组中的用户可能有不同的偏好。因此,在嵌入学习中引入组、用户和项目之间的相关性是很重要的。为了解决这个问题,我们提出了多图群协同过滤(MGGCF),它根据三个二部图来细化组、用户和项目的表示。此外,由于MGGCF同时对组、用户和项目嵌入进行了细化,因此它对组推荐任务和个人推荐任务都有好处。在一个真实数据集和两个合成数据集上进行了广泛的实验。实证结果表明,MGGCF不仅显著提高了群体推荐,而且显著提高了项目推荐。进一步的分析验证了嵌入传播对于更好地学习用户、组、项表示的重要性,揭示了MGGCF的合理性和有效性。
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