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Clustering Recommenders in Collaborative Filtering Using Explicit Trust Information

机译:使用显式信任信息进行协同筛选中的聚类推荐

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In this work, we explore the benefits of combining clustering and social trust information for Recommender Systems. We demonstrate the performance advantages of traditional clustering algorithms like k-Means and we explore the use of new ones like Affinity Propagation (AP). Contrary to what has been used before, we investigate possible ways that social-oriented information like explicit trust could be exploited with AP for forming clusters of high quality. We conducted a series of evaluation tests using data from a real Recommender system Epinions.com from which we derived conclusions about the usefulness of trust information in forming clusters of Recommenders. Moreover, from our results we conclude that the potential advantages in using clustering can be enlarged by making use of the information that Social Networks can provide.
机译:在这项工作中,我们探索了将群集和社会信任信息相结合的推荐系统的好处。我们展示了传统聚类算法(如k-Means)的性能优势,并探索了诸如亲和力传播(AP)等新算法的使用。与以前使用的方法相反,我们研究了可能的方法,以利用诸如AP的面向社会的信息(如显式信任)来形成高质量的集群。我们使用来自真实的Recommender系统Epinions.com的数据进行了一系列评估测试,从中我们得出了有关信任信息在形成推荐群中有用性的结论。此外,根据我们的结果,我们得出结论,通过利用社交网络可以提供的信息,可以扩大使用群集的潜在优势。

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