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A differential privacy based probabilistic mechanism for mobility datasets releasing

机译:基于差分隐私的移动数据集释放的概率机制

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摘要

With the rapid popularization and development of the global positioning systems, location-based services (LBSs) are springing up to provide mobile internet users with door-to-door services. The users' privacy becomes one of the main concerns of such services, as location data reflects various sensitive information, such as home address, employment and even health conditions. Releasing the aggregated mobility datasets, i.e., the population of mobile users at different regions in the area, is one of the solutions in solving the privacy concerns that covers the individual users' information and accepted as a valid privacy preserving method in releasing mobility datasets. However, in a recent research, by exploiting the uniqueness and regularity of mobility data, individual trajectories can be recovered from the aggregated mobility datasets with accuracy about 73-91%. In this paper, we propose a novel differential privacy based probabilistic mechanism for mobility datasets releasing (DP-Mobi), in which the privacy preserved population distributions are generated and released to support LBSs. We employ a probabilistic structure count min sketch in the mechanism to count the number of users at different regions, and add noise drawn from Laplace distribution to perturb the sketches. Meanwhile, we prove the perturbed sketches satisfy differential privacy, so that the users are able to control the privacy level by tuning the parameters of Laplace distribution. Through evaluation, we show that comparing with another privacy preserving approach in resisting the attack model, our mechanism DP-Mobi achieves 8% more recovery error with the same utility loss.
机译:随着全球定位系统的快速普及和发展,基于位置的服务(LBSS)正在涌现,以便为移动门到门服务提供移动互联网用户。用户隐私成为此类服务的主要问题之一,因为位置数据反映了各种敏感信息,例如家庭地址,就业甚至健康状况。释放聚合的移动数据集,即该地区不同地区的移动用户群体是解决隐私问题的解决方案之一,该解决方案涉及覆盖各个用户信息的隐私问题,并在释放移动性数据集中被接受为有效的隐私保留方法。然而,在最近的研究中,通过利用移动数据的唯一性和规律性,可以从聚合的移动数据集中恢复单个轨迹,精度约为73-91%。在本文中,我们提出了一种基于新的差异隐私基于差异隐私的移动数据集释放(DP-MOBI),其中生成并释放了隐私保留了人口分布以支持LBSS。我们采用概率结构计数MIN素描在机制中计算不同地区的用户数,并从拉普拉斯分布增加噪音以扰乱草图。同时,我们证明了扰动的草图满足差异隐私,使用户能够通过调整LAPLACE分布的参数来控制隐私级别。通过评估,我们表明与抵制攻击模型的另一个隐私保留方法相比,我们的机制DP-Mobi具有8%的恢复误差,具有相同的实用损耗。

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