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FUZZY TRUST AGGREGATION AND PERSONALIZED TRUST INFERENCE IN VIRTUAL SOCIAL NETWORKS

机译:虚拟社交网络中的模糊信任聚合和个性化信任推理

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Virtual marketplaces on the Web provide people with great facilities to buy and sell goods similar to conventional markets. In traditional business, reputation is subjectively built for known persons and companies as the deals are made in the course of time. As it is important to do business with trustful individuals and companies, there is a need to survive the reputation concept in virtual markets. Auction sites generally employ reputation systems based on feedbacks that provide a global view to a cyber dealer. In contrast to global trust, people usually infer their personal trust about someone whose reputation is completely or partially unknown by asking their trusted friends. Personal reputation is what makes a person trusted for some people and untrusted for others. There should be a facility for users in a virtual market to specify how much they trust a friend and also a mechanism that infers the trust of a user to another user who is not directly a friend of her. There are two main issues that should be addressed in trust inference. First, the trust modeling and aggregation problem needs to be challenged. Second, algorithms should be introduced to find and select the best paths among the existing trust paths from a source to a sink. First, as trust to a person can be stated more naturally using linguistic expressions, this work suggests employing linguistic terms for trust specification. To this end, corresponding fuzzy sets are defined for trust linguistic terms and a fuzzy trust aggregation method is also proposed. Comparing the fuzzy aggregation method to the existing aggregation methods shows superiority of fuzzy approach especially at aggregating contradictory information. Second, this paper proposes an incremental trust inference algorithm. The results show improvement in preciseness of inference for the proposed inference algorithm over the existing and recently proposed algorithm named TidalTrust.
机译:Web上的虚拟市场为人们提供了类似于常规市场的便利买卖商品的设施。在传统业务中,随着交易的进行,主观上会为知名人士和公司建立声誉。与可信赖的个人和公司开展业务很重要,因此有必要在虚拟市场中维持声誉理念。拍卖站点通常使用基于反馈的信誉系统,该反馈为网络经销商提供全局视图。与全球信任相反,人们通常会通过询问可信赖的朋友来推断其声誉完全或部分未知的某人的个人信任。个人声誉是使人对某些人信任而对其他人不信任的原因。虚拟市场中的用户应该有一种设施,可以指定他们对朋友的信任程度,以及一种将用户对另一个不是她的朋友的用户的信任推断出来的机制。信任推理中应解决两个主要问题。首先,信任建模和聚合问题需要挑战。其次,应该引入算法以在现有的从源到接收器的信任路径中找到并选择最佳路径。首先,由于可以使用语言表达更自然地表达对人的信任,因此这项工作建议采用语言术语进行信任规范。为此,为信任语言术语定义了相应的模糊集,并提出了一种模糊信任聚合方法。将模糊聚合方法与现有的聚合方法进行比较,显示了模糊方法的优势,尤其是在聚合矛盾信息时。其次,本文提出了一种增量信任推理算法。结果表明,与现有的和最近提出的名为TidalTrust的算法相比,所提出的推理算法的推理精度有所提高。

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