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Robust reputations for peer-to-peer markets.

机译:在点对点市场上享有盛誉。

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This thesis investigates on-line reputation systems for peer-to-peer markets and presents a number of systems which increase robustness against attacks on individual reputations while still distinguishing between honest and dishonest user behavior.; The fluidity of identity on-line and the unavailability of practical legal recourse make evaluating trust and risk in on-line markets both vital and difficult. Reputation systems have been proposed as one possible means of building trust among strangers by aggregating the experience of many users, and prove more-or-less effective in peer-to-peer marketplaces like eBay. However, the very attributes that make reputation systems helpful also make them a target for fraud. A good reputation is valuable, so some users may try to circumvent the system to gain a high reputation without effort. We look at two specific ways in which users attack reputation systems in peer-to-peer markets and discuss ways in which the damage can be mitigated.; We first address retaliatory negative feedback, where a user leaves a negative feedback for someone who complained about their behavior. We show that allowing retaliation can result in a reputation system that is incapable of identifying low-quality users and allows cheating to go unpunished. We then present EM-Trust, a system that is better able to estimate true user quality even with high levels of retaliation.; We next look at the issue of sybil attacks, where a single user creates a large collection of identities to increase his own reputation. We show that EigenTrust, a widely discussed algorithm that purports to resist similar collusion attacks, does not work against sybils. We then present Relative Rank, a transformation of EigenTrust that is both sybil resistant and better suited to peer-to-peer marketplaces. Finally, we discuss RAW, a variation of PageRank that offers additional guarantees of sybil-resistance.; We demonstrate that it is possible to design reputation systems that are as effective as existing non-robust ones at discriminating between honest and dishonest user behavior, and considerably less affected by common attacks against these systems.
机译:本文研究了针对点对点市场的在线信誉系统,并提出了许多系统,这些系统在抵制对个人信誉的攻击时提高了鲁棒性,同时仍然区分了诚实和不诚实的用户行为。在线身份的流动性和实际法律追索权的缺乏使得评估在线市场中的信任和风险变得十分重要和困难。信誉系统已被建议为通过聚集许多用户的经验来在陌生人之间建立信任的一种可能方法,并在eBay等对等市场中证明或多或少有效。但是,使信誉系统有用的特质也使它们成为欺诈的目标。良好的信誉是很有价值的,因此某些用户可能会尝试绕过该系统以不费吹灰之力就获得很高的声誉。我们着眼于用户攻击点对点市场信誉系统的两种特定方式,并讨论了减轻损害的方式。我们首先解决报复性负面反馈,其中用户对抱怨其行为的人留下负面反馈。我们表明,允许进行报复会导致声誉系统无法识别低质量的用户,并使作弊行为不受惩罚。然后,我们介绍了EM-Trust,它是即使在进行高度报复的情况下也能够更好地估计真实用户质量的系统。接下来,我们讨论sybil攻击的问题,其中一个用户创建了大量身份标识以提高自己的声誉。我们表明,EigenTrust是一种广为讨论的算法,旨在抵抗类似的串通攻击,但它不能对制音符起作用。然后,我们介绍“相对排名”,这是EigenTrust的一种转换,它既具有抗sybil性能,又更适合点对点市场。最后,我们讨论RAW,它是PageRank的一种变体,它提供了额外的防回缩稳定性的保证。我们证明,有可能设计一种信誉系统,该信誉系统在区分诚实和不诚实的用户行为方面与现有的非稳健系统一样有效,并且受到针对这些系统的常见攻击的影响要小得多。

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