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User Recommendations in Reciprocal and Bipartite Social Networks--An Online Dating Case Study

机译:互惠和双向社交网络中的用户推荐-在线约会案例研究

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摘要

Many social networks in our daily life are bipartite networks built on reciprocity. How can we make recommendations to others so that the user is interested in and attractive to those other users whom we've recommended? We propose a new collaborative-filtering model to improve user recommendations in bipartite and reciprocal 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 approach offers good performance in recommending both initial 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。我们如何向他人提出推荐,以使用户对我们推荐的其他用户感兴趣并吸引他们?我们提出了一种新的协作过滤模型,以改善双向和互惠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,该方法在推荐初次接触和对等接触方面均具有良好的性能。

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