MODELING COMPUTATIONAL TRUST BASED ON INTERACTION EXPERIENCE AND REPUTATION WITH USER INTERESTS IN SOCIAL NETWORK

Dinh Que Tran, Phuong Pham
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Abstract

Computational trust among peers plays a crucial role in sharing information, decision making, searching or attracting recommendations in intelligent systems and social networks. However, most trust models focus on considering interaction forms rather than analyzing contexts such as comments, posts being dispatched by users on social media. The purpose of this paper is to present a novel model of computational trust among a truster and a trustee in two stages. First, we construct a function, named experience topic-aware trust, whose computation is based on users interaction and their interests on topics. Then we establish a composition function, named topic-aware trust, which is constructed from the estimation of truster’s direct experience trust and some reputation trust on some trustee. Our experimental results show that the interest degrees affect on trust estimation more than interaction ones. In addition, the more interest degree in a topic users obtain, the more trustworthy they are.
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基于用户兴趣和交互经验的社交网络计算信任建模
在智能系统和社交网络中,同伴之间的计算信任在共享信息、决策、搜索或吸引推荐方面起着至关重要的作用。然而,大多数信任模型侧重于考虑交互形式,而不是分析用户在社交媒体上发表的评论、帖子等上下文。本文的目的是在两个阶段中提出一种新的受托人和被受托人之间的计算信任模型。首先,我们构建了一个名为“体验主题感知信任”的函数,它的计算基于用户的交互和他们对主题的兴趣。在此基础上,建立了一个主题感知信任的组合函数,该组合函数由信任者的直接经验信任和对信任者的声誉信任的估计构造而成。实验结果表明,兴趣度比交互度对信任估计的影响更大。此外,用户对一个话题的兴趣程度越高,他们就越值得信赖。
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