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Filtering trust opinions through reinforcement learning

机译:通过强化学习过滤信任意见

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摘要

In open online communities such as e-commerce, participants need to rely on services provided by others in order to thrive. Accurately estimating the trustworthiness of a potential interaction partner is vital to a participant's well-being. It is generally recognized in the research community that third-party testimony sharing is an effective way for participants to gain knowledge about the trustworthiness of potential interaction partners without having to incur the risk of actually interacting with them. However, the presence of biased testimonies adversely affects a participant's long term well-being. Existing trust computational models often require complicated manual tuning of key parameters to combat biased testimonies. Such an approach heavily involves subjective judgments and adapts poorly to changes in an environment In this study, we propose the Actor-Critic Trust (ACT) model, which is an adaptive trust evidence aggregation model based on the principles of reinforcement learning. The proposed method dynamically adjusts the selection of credible witnesses as well as the key parameters associated with the direct and indirect trust evidence sources based on the observed benefits received by the trusting entity. Extensive simulations have shown that the ACT approach significantly outperforms existing approaches in terms of mitigating the adverse effect of biased testimonies. Such a performance is due to the proposed accountability mechanism that enables ACT to attribute the outcome of an interaction to individual witnesses and sources of trust evidence, and adjust future evidence aggregation decisions without the need for human intervention. The advantage of the proposed model is particularly significant when service providers and witnesses strategically collude to improve their chances of being selected for interaction by service consumers.
机译:在开放的在线社区(例如电子商务)中,参与者需要依靠他人提供的服务才能蓬勃发展。准确估计潜在互动伙伴的信任度对于参与者的福祉至关重要。在研究社区中,通常公认的是,第三方证言共享是参与者获得有关潜在交互伙伴的可信度的知识的一种有效方法,而不必招致与之实际交互的风险。但是,有偏见的证词的存在会对参与者的长期健康产生不利影响。现有的信任计算模型通常需要对关键参数进行复杂的手动调整,以消除有偏见的证词。这种方法大量涉及主观判断,并且很难适应环境的变化。在本研究中,我们提出了Actor-Critic Trust(ACT)模型,这是一种基于强化学习原理的自适应信任证据聚集模型。所提出的方法基于信任实体收到的观察到的利益,动态调整对可靠证人的选择以及与直接和间接信任证据来源相关的关键参数。大量的模拟表明,在减轻有偏见的证词的不利影响方面,ACT方法明显优于现有方法。这种表现是由于提议的问责机制所致,该机制使ACT可以将互动的结果归因于单个证人和信任证据的来源,并可以在无需人工干预的情况下调整未来的证据汇总决策。当服务提供者和证人从战略上勾结以提高他们被服务消费者选择进行互动的机会时,所提出模型的优势尤其重要。

著录项

  • 来源
    《Decision support systems》 |2014年第10期|102-113|共12页
  • 作者单位

    School of Computer Engineering, Nanyang Technological University 637659, Singapore;

    School of Computer Engineering, Nanyang Technological University 637659, Singapore;

    School of Computer Engineering, Nanyang Technological University 637659, Singapore;

    School of Computer Engineering, Nanyang Technological University 637659, Singapore;

    Department of Electrical and Computer Engineering, the University of British Columbia, Vancouver, BC V6T1Z4, Canada;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Trust; Reputation; Credibility; Collusion;

    机译:信任;声誉;信誉;共谋;

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