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Geo-Graph-Indistinguishability: Protecting Location Privacy for LBS over Road Networks

机译:Geo-Graph-inbistinguistyity:保护LBS在道路网络上的位置隐私

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In recent years, Geo-Indistinguishability (GeoI) has been increasingly explored for protecting location privacy in location-based services (LBSs). GeoI is considered a theoretically rigorous location privacy notion since it extends differential privacy to the setting of location privacy. However, GeoI does not consider the road network, which may cause insufficiencies in terms of both privacy and utility for LBSs over a road network. In this paper, we first empirically evaluate the privacy guarantee and the utility loss of GeoI for LBSs over road networks. We identify an extra privacy loss when adversaries have the knowledge of road networks and the degradation of LBS quality of service. Second, we propose a new privacy notion, Geo-Graph-Indistinguishability (GeoGI), for protecting location privacy for LBSs over a road network and design a Graph-Exponential mechanism (GEM) satisfying GeoGI. We also show the relationship between GeoI and GeoGI to explain theoretically why GeoGI is a more suitable privacy notion over road networks. Finally, we evaluate the empirical privacy and utility of the proposed mechanism in real-world road networks. Our experiments confirm that GEM achieves higher utility for LBSs over a road network than the planar Laplace mechanism for Geol under the same empirical privacy level.
机译:近年来,越来越多地探讨了地理欺诈性(地理学)在基于位置的服务(LBSS)中保护地点隐私探索。由于它将差异隐私扩展到位置隐私的差异隐私,因此地理学被认为是理论上严格的位置隐私概念。然而,Geoi并不考虑道路网络,这可能会在道路网络上的隐私和效用方面造成不足。在本文中,我们首先在道路网络上证明了对LBSS的隐私保障和Geoi的公用事业丧失。当对手具有道路网络的知识和LBS质量的退化时,我们确定了额外的隐私损失。其次,我们提出了一种新的隐私概念,地理图形 - 无法区分(GeoGi),用于保护LBSS在道路网络上保护地点隐私,并设计一个满足GeoGi的图表 - 指数机制(Gem)。我们还展示了Geoi和Geogi之间的关系,从理论上解释了Geogi为道路网络的更合适的隐私概念。最后,我们评估了现实世界道路网络中拟议机制的经验隐私和效用。我们的实验证实,GEM在道路网络上实现了较高的LBSS,而不是在相同的经验隐私水平下的Geol Laplace机制。

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