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Recommender System with Composite Social Trust Networks

机译:具有复合社会信任网络的推荐人系统

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The development of online social networks has increased the importance of social recommendations. Social recommender systems are based on the idea that users who are linked in a social trust network tend to share similar interests. Thus, how to build an accurate social trust network will greatly affect recommendation performance. However, existing trust-based recommender approaches do not fully utilize social information to build rational trust networks and thus have low prediction accuracy and slow convergence speed. In this paper, the authors propose a composite trust-based probabilistic matrix factorization model, which is mainly composed of two steps: In step 1, the existing explicit trust network and the inferred implicit trust network are used to build a composite trust network. In step 2, the composite trust network is used to minimize both the rating difference and the trust difference between the true value and the inferred value. Experiments based on an Epinions dataset show that the authors' approach has significantly higher prediction accuracy and convergence speed than traditional collaborative filtering technology and the state-of-the-art trust-based recommendation approaches.
机译:在线社交网络的发展增加了社交推荐的重要性。社交推荐器系统基于这样的想法,即在社交​​信任网络中链接的用户倾向于共享相似的兴趣。因此,如何建立一个准确的社会信任网络将极大地影响推荐绩效。但是,现有的基于信任的推荐器方法不能充分利用社交信息来构建理性的信任网络,因此预测准确性较低,收敛速度较慢。本文提出了一种基于复合信任的概率矩阵分解模型,该模型主要由两个步骤组成:在步骤1中,使用现有的显式信任网络和推断的隐式信任网络来构建复合信任网络。在步骤2中,使用复合信任网络来最小化真实值与推断值之间的等级差异和信任差异。基于Epinions数据集的实验表明,与传统的协作过滤技术和基于信任的最新推荐方法相比,作者的方法具有更高的预测准确性和收敛速度。

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