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An Impression-Based Strategy for Defending Reputation Attacks in Multi-agent Reputation System

机译:基于印象的多代理信誉系统中信誉攻击防御策略

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As self-interested agents and malicious agents often launch various attacks to reputation systems and these attacks are usually deceptive, collusive, or strategic, it is difficult to keep reputation systems robust against multifarious attacks. Many filtering strategies have been designed for providing robust reputation evaluation and minimizing honest buyers' purchasing risks. This paper presents a novel impression-based strategy, which first gives an impression-based algorithm for selecting a group of lenient buyers and strict buyers respectively. Secondly, taking these groups as classification seeds, all sellers are pre-classified into honest and dishonest ones, and then all buyers are classified into honest, dishonest, and uncertain ones. Thirdly, sellers' reputation is evaluated based on the discounted ratings of honest, dishonest, and uncertain buyers. Several sets of experiments are designed to verify the effectiveness, accuracy, and robustness of our strategy. Results show that our strategy is accurate and robust in defending various common attacks.
机译:由于自私的代理和恶意代理经常对信誉系统发起各种攻击,并且这些攻击通常具有欺骗性,共谋性或战略性,因此很难保持信誉系统抵御各种攻击。已设计出许多过滤策略,以提供可靠的信誉评估并最大程度地减少诚实买家的购买风险。本文提出了一种新颖的基于印象的策略,该策略首先给出了一种基于印象的算法,分别选择一组宽松的购买者和严格的购买者。其次,将这些组作为分类种子,将所有卖方预先分类为诚实和不诚实的人,然后将所有买方分类为诚实,不诚实和不确定的人。第三,根据诚实,不诚实和不确定的买家的打折等级评估卖家的声誉。设计了几组实验来验证我们策略的有效性,准确性和鲁棒性。结果表明,我们的策略在防御各种常见攻击方面是准确而强大的。

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