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Robust Incentive Techniques for Peer-to-Peer Networks

机译:对等网络的鲁棒激励技术

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摘要

Lack of cooperation (free riding) is one of the key problems that confronts today's P2P systems. What makes this problem particularly difficult is the unique set of challenges that P2P systems pose: large populations, high turnover, asymmetry of interest, collusion, zero-cost identities, and traitors. To tackle these challenges we model the P2P system using the Generalized Prisoner's Dilemma (GPD), and propose the Reciprocative decision function as the basis of a family of incentives techniques. These techniques are fully distributed and include: discriminating server selection, maxflow-based subjective reputation, and adaptive stranger policies. Through simulation, we show that these techniques can drive a system of strategic users to nearly optimal levels of cooperation.
机译:缺乏合作(搭便车)是当今P2P系统面临的关键问题之一。使得此问题特别困难的是P2P系统带来的独特挑战:大量人口,高周转率,利益不对称,串通,零成本身份和叛徒。为了应对这些挑战,我们使用广义囚徒困境(GPD)对P2P系统进行建模,并提出往复决策功能作为一系列激励技术的基础。这些技术是完全分布式的,包括:区分服务器选择,基于maxflow的主观信誉和自适应陌生人策略。通过仿真,我们证明了这些技术可以使战略用户系统达到几乎最佳的合作水平。

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