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User recommendation with tensor factorization in social networks

机译:社交网络中具有张量分解的用户推荐

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The rapid growth of population in social networks has posed a challenge to existing systems for recommending to a user new friends having similar interests. In this paper, we address this user recommendation problem in social networks by proposing a novel framework which utilizes users' tagging information with tensor factorization. This work brings two major contributions: (1) A tensor model is proposed to capture the potential association among user, user's interests and friends in social tagging systems; (2) A novel approach is proposed to recommend new friends based on this model. The experiments on a real-world dataset crawled from Last.fm show that the proposed method outperforms other state-of-the-art approaches.
机译:社交网络中人口的快速增长对现有系统向用户推荐具有相似兴趣的新朋友提出了挑战。在本文中,我们通过提出一种新颖的框架来解决社交网络中的用户推荐问题,该框架利用张量因子分解来利用用户的标签信息。这项工作带来了两个主要贡献:(1)提出了一个张量模型来捕获社交标签系统中用户,用户兴趣和朋友之间的潜在关联; (2)提出了一种基于该模型推荐新朋友的新颖方法。从Last.fm抓取的真实数据集上的实验表明,该方法优于其他最新方法。

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