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Eliciting Honest Reputation Feedback in a Markov Setting

机译:在马尔可夫设置中引出诚实的声誉反馈

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Recently, online reputation mechanisms have been proposed that reward agents for honest feedback about products and services with fixed quality. Many real-world settings, however, are inherently dynamic. As an example, consider a web service that wishes to publish the expected download speed of a file mirrored on different server sites. In contrast to the models of Miller, Resnick and Zeck-hauser and of Jurca and Faltings, the quality of the service (e. g., a server's available bandwidth) changes over time and future agents are solely interested in the present quality levels. We show that hidden Markov models (HMM) provide natural generalizations of these static models and design a payment scheme that elicits honest reports from the agents after they have experienced the quality of the service.
机译:最近,已经提出了在线声誉机制,奖励代理商有关具有固定质量的产品和服务的诚实反馈。然而,许多真实的设置本质上是动态的。例如,考虑希望在不同的服务器站点上发布镜像的文件的预期下载速度的Web服务。与米勒,Resnick和Zeck-Hauser和Jurca和Faltings的模型相比,服务质量(例如,服务器的可用带宽)随着时间的推移和未来的代理而变化,并对当前的质量水平仅感兴趣。我们显示隐藏的马尔可夫模型(嗯)提供了这些静态模型的自然概括,并设计了一个支付计划,在经历了经验丰富的服务之后,在代理人经历了服务质量之后,这是一项支付计划。

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