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Scalable Privacy-Preserving Participant Selection for Mobile Crowdsensing Systems: Participant Grouping and Secure Group Bidding

机译:可扩展的隐私保留移动人群系统的参与者选择:参与者分组和安全组竞标

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摘要

Mobile crowdsensing (MCS) has been emerging as a new sensing paradigm where vast numbers of mobile devices are used for sensing and collecting data in various applications. Auction based participant selection has been widely used for current MCS systems to achieve user incentive and task assignment optimization. However, participant selection problems solved with auction-based approaches usually involve participants' privacy concerns because a participant's bids may contain her private information (such as location visiting patterns), and disclosure of participants' bids may disclose their private information as well. In this paper, we study how to protect such bid privacy in a temporally and spatially dynamic MCS system. We assume that both sensing tasks and mobile participants have dynamic characteristics over spatial and temporal domains. Following the classical VCG auction, we carefully design a scalable grouping based privacy-preserving participant selection scheme, where participants are grouped into multiple participant groups and then auctions are organized within groups via secure group bidding. By leveraging Lagrange polynomial interpolation to perturb participants' bids within groups, participants' bid privacy is preserved. In addition, the proposed solution does not affect the operation of current MCS platform since the groups act as regular users to the platform. Both theoretical analysis and real-life tracing data simulations verify the efficiency and security of the proposed solution.
机译:移动人群(MCS)被涌现为一种新的传感范式,其中广大数量的移动设备用于在各种应用中传感和收集数据。基于拍卖的参与者选择已被广泛用于当前MCS系统,以实现用户激励和任务分配优化。然而,基于拍卖方法解决的参与者选择问题通常涉及参与者的隐私问题,因为参与者的出价可能包含她的私人信息(例如位置访问模式),并且参与者出价的披露也可能披露其私人信息。在本文中,我们研究了如何在时间和空间动态的MCS系统中保护此类出价隐私。我们假设感知任务和移动参与者都具有在空间和时间域上具有动态特性。在经典的VCG拍卖之后,我们仔细设计了一种基于可扩展的基于隐私保留的参与者选择方案,其中参与者被分组为多个参与者组,然后通过安全组竞标组织在组中组织拍卖。通过利用Lagrange多项式插值来涉及到群体内的Perurburant参与者的出价,将保留参与者的出价隐私。此外,建议的解决方案不会影响当前MCS平台的操作,因为该组作为常规用户到平台。理论分析和现实追踪数据模拟验证了所提出的解决方案的效率和安全性。

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