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Flow-based reputation with uncertainty: evidence-based subjective logic

机译:具有不确定性的基于流程的声誉:基于证据的主观逻辑

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The concept of reputation is widely used as a measure of trustworthiness based on ratings from members in a community. The adoption of reputation systems, however, relies on their ability to capture the actual trustworthiness of a target. Several reputation models for aggregating trust information have been proposed in the literature. The choice of model has an impact on the reliability of the aggregated trust information as well as on the procedure used to compute reputations. Two prominent models are flow-based reputation (e.g., EigenTrust, PageRank) and subjective logic-based reputation. Flow-based models provide an automated method to aggregate trust information, but they are not able to express the level of uncertainty in the information. In contrast, subjective logic extends probabilistic models with an explicit notion of uncertainty, but the calculation of reputation depends on the structure of the trust network and often requires information to be discarded. These are severe drawbacks. In this work, we observe that the 'opinion discounting' operation in subjective logic has a number of basic problems. We resolve these problems by providing a new discounting operator that describes the flow of evidence from one party to another. The adoption of our discounting rule results in a consistent subjective logic algebra that is entirely based on the handling of evidence. We show that the new algebra enables the construction of an automated reputation assessment procedure for arbitrary trust networks, where the calculation no longer depends on the structure of the network, and does not need to throw away any information. Thus, we obtain the best of both worlds: flow-based reputation and consistent handling of uncertainties.
机译:信誉的概念已广泛用于根据社区成员的评分来衡量信任度。但是,信誉系统的采用取决于它们捕获目标实际可信度的能力。文献中已经提出了几种用于汇总信任信息的信誉模型。模型的选择会影响汇总的信任信息的可靠性以及用于计算信誉的过程。两种主要的模型是基于流的信誉(例如EigenTrust,PageRank)和基于主观逻辑的信誉。基于流的模型提供了一种聚合信任信息的自动化方法,但是它们无法表达信息中的不确定性级别。相反,主观逻辑以明确的不确定性概念扩展了概率模型,但是信誉的计算取决于信任网络的结构,并且经常需要丢弃信息。这些都是严重的缺点。在这项工作中,我们观察到主观逻辑中的“观点折扣”操作存在许多基本问题。我们通过提供一个新的贴现运算符来解决这些问题,该运算符描述了从一方到另一方的证据流。采用我们的折现规则会产生一致的主观逻辑代数,该代数完全基于证据的处理。我们表明,新的代数可以为任意信任网络构建自动的信誉评估程序,该计算不再依赖于网络的结构,并且不需要丢弃任何信息。因此,我们获得了两全其美的优势:基于流量的信誉和对不确定性的一致处理。

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