Prolonging the Hide-and-Seek Game: Optimal Trajectory Privacy for Location-Based Services

George Theodorakopoulos, R. Shokri, C. Troncoso, J. Hubaux, J. Boudec
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引用次数: 60

Abstract

Human mobility is highly predictable. Individuals tend to only visit a few locations with high frequency, and to move among them in a certain sequence reflecting their habits and daily routine. This predictability has to be taken into account in the design of location privacy preserving mechanisms (LPPMs) in order to effectively protect users when they expose their whereabouts to location-based services (LBSs) continuously. In this paper, we describe a method for creating LPPMs tailored to a user's mobility profile taking into her account privacy and quality of service requirements. By construction, our LPPMs take into account the sequential correlation across the user's exposed locations, providing the maximum possible trajectory privacy, i.e., privacy for the user's past, present location, and expected future locations. Moreover, our LPPMs are optimal against a strategic adversary, i.e., an attacker that implements the strongest inference attack knowing both the LPPM operation and the user's mobility profile. The optimality of the LPPMs in the context of trajectory privacy is a novel contribution, and it is achieved by formulating the LPPM design problem as a Bayesian Stackelberg game between the user and the adversary. An additional benefit of our formal approach is that the design parameters of the LPPM are chosen by the optimization algorithm.
延长捉迷藏游戏:基于位置的服务的最优轨迹隐私
人类的流动性是高度可预测的。个体往往只去几个频率较高的地点,并以一定的顺序在这些地点之间移动,这反映了他们的习惯和日常生活。在位置隐私保护机制(LPPMs)的设计中必须考虑到这种可预测性,以便在用户不断向基于位置的服务(lbs)暴露其位置时有效地保护用户。在本文中,我们描述了一种创建lppm的方法,该方法根据用户的移动性配置文件定制,同时考虑到用户的隐私和服务质量需求。通过构建,我们的lppm考虑了用户暴露位置之间的顺序相关性,提供了最大可能的轨迹隐私,即用户过去、现在位置和预期未来位置的隐私。此外,我们的LPPM对于战略对手来说是最优的,即,一个攻击者实现了最强的推理攻击,既知道LPPM操作,也知道用户的移动性配置文件。轨迹隐私环境下LPPM的最优性是一个新颖的贡献,它是通过将LPPM设计问题表述为用户和对手之间的贝叶斯Stackelberg博弈来实现的。我们的形式化方法的另一个好处是LPPM的设计参数是由优化算法选择的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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