EigenTrustp++: Attack resilient trust management

Xinxin Fan, Ling Liu, Mingchu Li, Zhiyuan Su
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引用次数: 24

Abstract

This paper argues that trust and reputation models should take into account not only direct experiences (local trust) and experiences from the circle of “friends”, but also be attack resilient by design in the presence of dishonest feedbacks and sparse network connectivity. We first revisit EigenTrust, one of the most popular reputation systems to date, and identify the inherent vulnerabilities of EigenTrust in terms of its local trust vector, its global aggregation of local trust values, and its eigenvector based reputation propagating model. Then we present EigenTrust++, an attack resilient trust management scheme. EigenTrust++ extends the eigenvector based reputation propagating model, the core of EigenTrust, and counters each of vulnerabilities identified with alternative methods that are by design more resilient to dishonest feedbacks and sparse network connectivity under four known attack models. We conduct extensive experimental evaluation on EigenTrust++, and show that EigenTrust++ can significantly outperform EigenTrust in terms of both performance and attack resilience in the presence of dishonest feedbacks and sparse network connectivity against four representative attack models.
eigentrust++:攻击弹性信任管理
本文认为,信任和声誉模型不仅应该考虑直接经验(本地信任)和来自“朋友圈”的经验,而且应该在存在不诚实反馈和稀疏网络连接的情况下设计具有抗攻击能力。我们首先回顾了迄今为止最流行的信誉系统之一EigenTrust,并从其本地信任向量、本地信任值的全局聚合以及基于特征向量的信誉传播模型等方面确定了EigenTrust的固有漏洞。在此基础上,提出了一种抗攻击的信任管理方案eigentrust++。EigenTrust++扩展了基于特征向量的信誉传播模型(EigenTrust的核心),并通过在四种已知攻击模型下设计的更有弹性的不诚实反馈和稀疏网络连接的替代方法来对抗每个漏洞。我们对EigenTrust++进行了广泛的实验评估,并表明在存在不诚实反馈和稀疏网络连接的情况下,针对四种代表性攻击模型,EigenTrust++在性能和攻击弹性方面都明显优于EigenTrust。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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