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Service selection in stochastic environments: A learning-automaton based solution

机译:随机环境中的服务选择:基于学习自动机的解决方案

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In this paper, we propose a novel solution to the problem of identifying services of high quality. The reported solutions to this problem have, in one way or the other, resorted to using so-called "Reputation Systems" (RSs). Although these systems can offer generic recommendations by aggregating user-provided opinions about the quality of the services under consideration, they are, understandably, prone to "ballot stuffing" and "badmouthing" in a competitive marketplace. In general, unfair ratings may degrade the trustworthiness of RSs, and additionally, changes in the quality of service, over time, can render previous ratings unreliable. As opposed to the reported solutions, in this paper, we propose to solve the problem using tools provided by Learning Automata (LA), which have proven properties capable of learning the optimal action when operating in unknown stochastic environments. Furthermore, they combine rapid and accurate convergence with low computational complexity. In addition to its computational simplicity, unlike most reported approaches, our scheme does not require prior knowledge of the degree of any of the above mentioned problems associated with RSs. Instead, it gradually learns the identity and characteristics of the users which provide fair ratings, and of those who provide unfair ratings, even when these are a consequence of them making unintentional mistakes. Comprehensive empirical results show that our LA-based scheme efficiently handles any degree of unfair ratings (as long as these ratings are binary-the extension to non-binary ratings is "trivial", if we use the S-model of LA computations instead of the P -model). Furthermore, if the quality of services and/or the trustworthiness of the users change, our scheme is able to robustly track such changes over time. Finally, the scheme is ideal for decentralized processing. Accordingly, we believe that our LA-based scheme forms a promising basis for improving the performance of RSs in general.
机译:在本文中,我们针对识别高质量服务的问题提出了一种新颖的解决方案。已报告的针对该问题的解决方案以一种或另一种方式采用了所谓的“信誉系统”(RSs)。尽管这些系统可以通过汇总用户提供的有关所考虑服务质量的意见来提供通用建议,但可以理解的是,在竞争激烈的市场中,它们很容易出现“选票填塞”和“坏账”。通常,不公平的评分可能会降低RS的可信度,此外,随着时间的流逝,服务质量的变化可能会使以前的评分变得不可靠。与报告的解决方案相反,在本文中,我们建议使用Learning Automata(LA)提供的工具来解决该问题,该工具具有经过验证的特性,能够在未知随机环境中运行时学习最佳操作。此外,它们将快速准确的收敛与低计算复杂性结合在一起。除了其计算简单之外,与大多数报告的方法不同,我们的方案不需要与RS相关的任何上述问题的程度的先验知识。取而代之的是,它逐渐了解提供公平评级的用户和提供不公平评级的用户的身份和特征,即使这些是由于他们犯了无意的错误而导致的。全面的经验结果表明,我们的基于LA的方案可以有效地处理任何程度的不公平评级(只要这些评级是二进制评级,如果我们使用LA计算的S模型而不是LA模型,则对非二进制评级的扩展是“琐碎的” P模型)。此外,如果服务质量和/或用户的信任度发生变化,我们的方案就能够随着时间的推移稳健地跟踪此类变化。最后,该方案非常适合分散处理。因此,我们认为我们基于LA的方案可为总体上改善RS的性能提供有希望的基础。

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