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Recommendation in Reciprocal and Bipartite Social Networks- A Case Study of Online Dating

机译:互惠和双向社交网络中的推荐-在线约会案例研究

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Many social networks in our daily life are bipartite networks that are built on reciprocity. How can we recommend users/friends to a user, so that the user is interested in and attractive to recommended users? In this research, we propose a new collaborative filtering model to improve user recommendations in reciprocal and bipartite social networks. The model considers a user's "taste" in picking others and "attractiveness" in being picked by others. A case study of an online dating network shows that the new model outperforms a baseline collaborative filtering model on recommending both initial contacts and reciprocal contacts.
机译:我们日常生活中的许多社交网络都是建立在互惠基础上的双向网络。我们如何向用户推荐用户/朋友,以使用户对推荐用户感兴趣并吸引他们?在这项研究中,我们提出了一种新的协作过滤模型,以改善双向和双向社交网络中的用户推荐。该模型考虑了用户在选择他人时的“品味”和在被他人选择时的“吸引力”。一个在线约会网络的案例研究表明,在推荐初始联系人和对等联系人方面,新模型的性能均优于基线协作过滤模型。

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