Reputation aggregation in peer-to-peer network using differential gossip algorithm

Ruchir Gupta, Y. N. Singh
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Abstract

In a peer-to-peer system, a node should estimate reputation of other peers not only on the basis of its own interaction, but also on the basis of experience of other nodes. Reputation aggregation mechanism implements strategy for achieving this. Reputation aggregation in peer to peer networks is generally a very time and resource consuming process. This paper proposes a reputation aggregation algorithm that uses a variant of gossip algorithm called differential gossip. In this paper, estimate of reputation is considered to be having two parts, one common component which is same with every node, and the other one is the information received from immediate neighbours based on the neighbours' direct interaction with the node. Theoretical analysis and numerical results show that differential gossip is fast and requires lesser amount of resources. The reputation computed using the proposed algorithm also shows a good amount of immunity to the collusion.
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基于差分八卦算法的点对点网络声誉聚合
在点对点系统中,一个节点不仅要根据自己的交互,还要根据其他节点的经验来估计其他节点的声誉。信誉聚合机制实现了实现这一目标的策略。点对点网络中的声誉聚合通常是一个非常耗时和消耗资源的过程。本文提出了一种声誉聚合算法,该算法使用了一种称为差分八卦的八卦算法的变体。本文认为信誉估计分为两部分,一部分是每个节点都相同的公共分量,另一部分是基于邻居与节点的直接交互而从近邻接收到的信息。理论分析和数值结果表明,微分八卦速度快,占用资源少。利用该算法计算的声誉对合谋也有很好的免疫力。
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