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Predicting Trust Relationships in Social Networks Based on WKNN

机译:基于WKNN的社交网络信任关系预测

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Trust relationships between user pairs play a vital role in making decisions for social network users. In reality, available explicit trust relations are often extremely sparse, therefore, inferring unknown trust relations attracts increasing attention in recent years. In this paper, a new approach originating from machine learning is proposed to predict trust relationships in social networks by exploring an improved k-nearest neighbor algorithm based on distance weight (WKNN). Firstly, we extract three critical attributes from users’ personal profiles and interactive information; then, an improved KNN algorithm named WKNN is proposed; finally, comparative analysis between them is performed by using real-world dataset from Epinions to evaluate their performance in trust prediction. Empirical evaluation demonstrates that the proposed framework (WKNN model) is feasible and effective in predicting trust relationships.
机译:用户对之间的信任关系在为社交网络用户制定决策中起着至关重要的作用。实际上,可用的显式信任关系通常非常稀疏,因此,推断未知的信任关系近年来受到越来越多的关注。本文提出了一种基于机器学习的新方法,通过探索一种基于距离权重(WKNN)的改进的k最近邻算法来预测社交网络中的信任关系。首先,我们从用户的个人资料和互动信息中提取三个关键属性;提出了一种改进的KNN算法WKNN。最后,通过使用Epinions的真实数据集对它们之间的比较进行分析,以评估它们在信任预测中的性能。实证评估表明,所提出的框架(WKNN模型)在预测信任关系方面是可行和有效的。

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