A Trust Prediction Method Based on Heterogeneous Information Networks

Ruili Xiao, Xiangrong Tong, Yinggang Li
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Abstract

It is essential to predict the level of trust among users before they interact to reduce the risk of interaction. Due to the sparsity of trust relationships, it is inefficient to simply use explicit trust relationships to predict the trust among users, and even the trust path may be lost. On the other hand, there are implicit trust relationships among users such as the joint items that several users all rated. Once the trust relationship is extracted, it will greatly expand the number of trusted users. To this end, a trust prediction method incorporating rating information is proposed to address this problem. It first constructs a heterogeneous information network consisting of social and rating information. Secondly, in the trust prediction period, if the user has no trusted users to choose from, the joint item is used as a bridge to find implicit trusted users from users who have jointly rated the item. Finally, the Dueling DQN algorithm is used to calculate the strength of the trust path, and the predicted trust value is derived by aggregating multiple trust paths based on an aggregation function. The experimental results on two datasets indicate the presented approach outperforms most existing trust prediction methods.
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基于异构信息网络的信任预测方法
在用户进行交互之前,预测用户之间的信任水平是降低交互风险的关键。由于信任关系的稀疏性,单纯使用显式的信任关系来预测用户之间的信任是低效的,甚至可能丢失信任路径。另一方面,用户之间存在隐性信任关系,如多个用户共同评价的联合项目。一旦提取信任关系,将极大地扩展可信用户的数量。为此,提出了一种结合评级信息的信任预测方法。首先构建了由社会信息和评价信息组成的异构信息网络。其次,在信任预测期,如果用户没有可信用户可供选择,则使用联合项目作为桥梁,从共同评价该项目的用户中寻找隐含可信用户。最后,采用Dueling DQN算法计算信任路径的强度,并基于聚合函数对多个信任路径进行聚合,得到预测的信任值。在两个数据集上的实验结果表明,该方法优于大多数现有的信任预测方法。
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