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Modeling Users' Multifaceted Interest Correlation for Social Recommendation

机译:为社会推荐建模用户的多方面兴趣关联

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Recommender systems suggest to users the items that are potentially of their interests, by mining users' feedback data on items. Social relations provide an independent source of information about users and can be exploited for improving recommendation performance. Most of existing recommendation methods exploit social influence by refining social relations into a scalar indicator to either directly recommend friends' visited items to users or constrain that friends' embeddings are similar. However, a scalar indicator cannot express the multifaceted interest correlations between users, since each user's interest is distributed across multiple dimensions. To address this issue, we propose a new embedding-based framework, which exploits users' multifaceted interest correlation for social recommendation. We design a dimension-wise attention mechanism to learn a correlation vector to characterize the interest correlation between a pair of friends, capturing the high variation of users' interest correlation on multiple dimensions. Moreover, we use friends' embeddings to smooth a user's own embedding with the correlation vector as weights, building the elaborate unstructured social influence between users. Experimental results on two real-world datasets demonstrate that modeling users' multifaceted interest correlations can significantly improve recommendation performance.
机译:推荐系统通过挖掘用户对项目的反馈数据,向用户建议他们可能感兴趣的项目。社交关系提供有关用户的独立信息源,可以用来改善推荐效果。现有的大多数推荐方法都是通过将社会关系细化为标量指标来利用社会影响力,以直接向用户推荐朋友的访问项目或限制朋友的嵌入内容相似。但是,由于每个用户的兴趣分布在多个维度上,因此标量指标无法表达用户之间的多方面兴趣相关性。为了解决这个问题,我们提出了一个新的基于嵌入的框架,该框架利用用户的多方面兴趣相关性进行社交推荐。我们设计了一种维度注意机制,以学习相关向量来表征一对朋友之间的兴趣相关性,从而捕获用户在多个维度上的兴趣相关性的高变化。此外,我们使用朋友的嵌入以相关向量作为权重来平滑用户自己的嵌入,从而在用户之间建立了精心设计的非结构化社会影响力。在两个真实数据集上的实验结果表明,对用户的多方面兴趣相关性进行建模可以显着提高推荐性能。

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