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A survey of local differential privacy for securing internet of vehicles

机译:对局部差异隐私进行保护,用于保护车辆互联网

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摘要

Internet of connected vehicles (IoV) are expected to enable intelligent traffic management, intelligent dynamic information services, intelligent vehicle control, etc. However, vehicles' data privacy is argued to be a major barrier toward the application and development of IoV, thus causing a wide range of attentions. Local differential privacy (LDP) is the relaxed version of the privacy standard, differential privacy, and it can protect users' data privacy against the untrusted third party in the worst adversarial setting. Therefore, LDP is potential to protect vehicles' data privacy in the practical scenario, IoV, although vehicles exhibit unique features, e.g., high mobility, short connection times, etc. To this end, in this paper, we first give an overview of the existing LDP techniques and present the thorough comparisons of these work in terms of advantages, disadvantages, and computation cost, in order to get the readers well acquainted with LDP. Thereafter, we investigate the potential applications of LDP in securing IoV in detail. Last, we direct several future research directions of LDP in IoV, to bridge the gaps between LDP researches and the privacy preservation in IoV. The originality of this survey is that it is the first work to summarize and compare the existing LDP research work and that it also does an pioneering work toward the in-depth analysis of the potential applications of LDP in privacy preservation in IoV.
机译:连接车辆(IOV)互联网将有望实现智能交通管理,智能动态信息服务,智能车辆控制等。然而,车辆的数据隐私被认为是对IOV的应用和发展的主要障碍,从而导致了一个广泛的关注。本地差异隐私(LDP)是隐私标准,差异隐私的轻松版本,它可以保护用户在最糟糕的对抗环境中对不受信任的第三方的数据隐私。因此,LDP是在实际情况下保护车辆数据隐私的潜力,尽管车辆表现出独特的特征,例如高移动性,短连接时间等。在本文中,我们首先概述了现有的LDP技术和在优缺点和计算成本方面呈现这些工作的彻底比较,以便让读者熟悉LDP。此后,我们研究了LDP在详细安全IOV中的潜在应用。最后,我们指导了IOV中LDP的几个未来的研究方向,弥合了LDP研究与IOV的隐私保护之间的差距。本调查的原创性是第一个总结和比较现有的LDP研究工作的工作,并且它还对LDP在IOV中隐私保护中的潜在应用进行了开拓深入分析的开创性工作。

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