毒水:一种减少P2P网络声誉排名误差的自适应方法

Yufeng Wang, A. Nakao
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引用次数: 2

摘要

本文初步提出了一种名为“毒水”的声誉排序算法,用于抵抗前端对等攻击——通过与其他对等体一直合作而获得较高声誉值的对等体,然后通过将自己的大部分声誉值传递给那些恶意的对等体来提升自己的恶意好友。具体来说,我们引入了有毒水(PW)的概念,该概念从已识别的恶意对等点向其他对等点的传入信任链接的相反方向迭代泛滥。此外,我们提出了与每个同伴的PW水平逻辑相关的扩散因子(SF)的概念。然后,我们设计了与同行推荐能力(SF)无缝集成的新声誉排名算法,以推断出每个同行更准确的声誉排名。仿真结果表明,与特征信任相比,当P2P系统中存在多个恶意节点和前端节点时,毒水算法可以显著降低排名错误率,最高可达20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Poisonedwater: an adaptive approach to reducing the reputation ranking error in P2P networks
This paper preliminarily proposes a reputation ranking algorithm called “Poisonedwater” to resist front peer attack—peers that gain high reputation values by always cooperating with other peers and then promote their malicious friends through passing most of their reputation values to those malicious peers. Specifically, we introduce a notion of Poisoned Water (PW) that iteratively floods from identified malicious peers in the reverse direction of the incoming trust links towards other peers. Furthermore, we propose the concept of Spreading Factor (SF) that is logistically correlated to each peer's PW level. Then, we design the new reputation ranking algorithm seamlessly integrated with peers' recommendation ability (represented as SF), to infer the more accurate reputation ranking for each peer. Simulation results show that, in comparison with Eigentrust, Poisonedwater can significantly reduce the ranking error ratio up to 20%, when P2P systems exist many malicious peers and front peers.
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