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QnQQnQ: Quality and Quantity Based Unified Approach for Secure and Trustworthy Mobile Crowdsensing

机译:QnQQnQ:基于质量和数量的统一方法,可实现安全可靠的移动人群

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摘要

A major challenge in mobile crowdsensing applications is the generation of false (or spam) contributions resulting from selfish and malicious behaviors of users, or wrong perception of an event. Such false contributions induce loss of revenue owing to undue incentivization, and also affect the operational reliability of the applications. To counter these problems, we propose an event-trust and user-reputation model, called $QnQ$QnQ, to segregate different user classes such as honest, selfish, or malicious. The resultant user reputation scores, are based on both 'quality' (accuracy of contribution) and 'quantity' (degree of participation) of their contributions. Specifically, $QnQ$QnQ exploits a rating feedback mechanism for evaluating an event-specific expected truthfulness, which is then transformed into a robust quality of information (QoI) metric to weaken various effects of selfish and malicious user behaviors. Eventually, the QoIs of various events in which a user has participated are aggregated to compute his reputation score, which in turn is used to judiciously disburse user incentives with a goal to reduce the incentive losses of the CS application provider. Subsequently, inspired by cumulative prospect theory (CPT), we propose a risk tolerance and reputation aware trustworthy decision making scheme to determine whether an event should be published or not, thus improving the operational reliability of the application. To evaluate $QnQ$QnQ experimentally, we consider a vehicular crowdsensing application as a proof-of-concept. We compare QoI performance achieved by our model with Jsangs belief model, reputation scoring with Dempster-Shafer based reputation model, and operational (decision) accuracy with expected utility theory. Experimental results demonstrate that $QnQ$QnQ is able to better capture subtle differences in user behaviors based on both quality and quantity, reduces incentive losses, and significantly improves operational accuracy in presence of rogue contributions.
机译:移动人群感应应用程序中的主要挑战是由于用户的自私和恶意行为或对事件的错误理解而导致的虚假(或垃圾邮件)贡献的产生。由于不当激励,这种虚假贡献会导致收入损失,并且还会影响应用程序的操作可靠性。为了解决这些问题,我们提出了一个事件信任和用户信誉模型,称为$ QnQ $ QnQ,以隔离不同的用户类别,例如诚实,自私或恶意。最终的用户信誉分数基于其贡献的“质量”(贡献的准确性)和“数量”(参与度)两者。具体来说,$ QnQ $ QnQ利用评级反馈机制来评估特定于事件的预期真实性,然后将其转换为可靠的信息质量(QoI)度量标准,以减弱自私和恶意用户行为的各种影响。最终,将用户参与的各种事件的QoI进行汇总,以计算其信誉得分,进而将其用于明智地分配用户激励措施,以减少CS应用程序提供商的激励损失。随后,受累积前景理论(CPT)的启发,我们提出了一种风险承受能力和声誉意识值得信赖的决策方案,以确定是否应发布事件,从而提高了应用程序的操作可靠性。为了通过实验评估$ QnQ $ QnQ,我们考虑将车辆大众感知应用作为概念验证。我们将我们的模型与Jsangs信念模型,基于Dempster-Shafer的信誉模型的信誉评分以及预期效用理论的运营(决策)准确性进行了比较。实验结果表明,$ QnQ $ QnQ能够更好地捕获基于质量和数量的用户行为中的细微差异,减少激励损失,并在存在恶意贡献的情况下显着提高操作准确性。

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