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Inferring users' preferences through leveraging their social relationships

机译:通过利用他们的社交关系推断用户的偏好

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Recommender systems, inferring users' preferences from their historical activities and personal profiles, have been an enormous success in the last several years. Most of the existing works are based on the similarities of users, objects or both that derived from their purchases records in the online shopping platforms. Such approaches, however, are facing bottlenecks when the known information is limited. The extreme case is how to recommend products to new users, namely the so-called cold-start problem. The rise of the online social networks gives us a chance to break the glass ceiling. Birds of a feather flock together. Close friends may have similar hidden pattern of selecting products and the advices from friends are more trustworthy. In this paper, we integrate the individual's social relationships into recommender systems and propose a new method, called Social Mass Diffusion (SMD), based on a mass diffusion process in the combined network of users' social network and user-item bipartite network. The results show that the SMD algorithm can achieve higher recommendation accuracy than the Mass Diffusion (MD) purely on the bipartite network. Especially, the improvement is striking for small degree users. Moreover, SMD provides a good solution to the cold-start problem. The recommendation accuracy for new users significantly higher than that of the conventional popularity-based algorithm. These results may shed some light on the new designs of better personalized recommender systems and information services.
机译:推荐系统,推断用户尊重的历史活动和个人资料的偏好,在过去几年中一直是巨大的成功。现有的大多数作品都基于用户,对象或两者的相似之处,它们从在线购物平台中的购买记录派生。然而,当已知信息有限时,这种方法面临瓶颈。极端情况是如何向新用户推荐产品,即所谓的冷启动问题。在线社交网络的兴起让我们有机会打破玻璃天花板。一群羽毛一起聚集在一起。亲密的朋友可能有类似的隐藏模式的选择产品,朋友的建议更值得信赖。在本文中,我们将个人的社会关系集成到推荐系统中,并根据用户社交网络和用户项目二分网络组合网络中的大众扩散过程提出了一种称为社会大众扩散(SMD)的新方法。结果表明,SMD算法可以在纯粹在二分网络上纯粹的质量扩散(MD)来实现更高的推荐精度。特别是,对小型用户的改进是惊人的。此外,SMD为冷启动问题提供了良好的解决方案。新用户的建议准确性明显高于基于常规人气的算法。这些结果可能会在更好的个性化推荐系统和信息服务的新设计上阐明一些光。

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