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首页> 外文期刊>IEEE Transactions on Vehicular Technology >P4Mobi: A Probabilistic Privacy-Preserving Framework for Publishing Mobility Datasets
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P4Mobi: A Probabilistic Privacy-Preserving Framework for Publishing Mobility Datasets

机译:p4mobi:用于发布移动数据集的概率隐私保留框架

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摘要

The large-scale collection of individuals' mobility data poses serious privacy concerns. Instead of perturbing data by adding noise to the raw location data to preserve privacy of individuals, we propose an approach that achieves privacy-preservation at the statistics level of aggregating mobility datasets with the probabilistic data structure Count-Min Sketch (CMS) [1], which has been widely used to provide efficient statistic functions with a tunable error bound. We use CMS to estimate the population density distributions in the mobility datasets, where the error bound determines utility guarantees. We develop P4Mobi, a novel Probabilistic Privacy-Preserving Publishing framework for Mobility datasets that protects individuals' privacy while complying to a specific utility requirement. We empirically validate the performance of P4Mobi in terms of utility and privacy-preservation by demonstrating its resilience against a recently proposed reconstruction attack model using two real-world datasets. We compare P4Mobi to two state-of-the-art methods and show that with the same level of privacy achieved against our attack model, P4Mobi significantly improves the utility of the published mobility datasets by up to 20%. We also provide a theoretical estimate of the utility achieved by P4Mobi. We found a very consistent match between the estimated and empirical utility of P4Mobi as evaluated on two datasets.
机译:个人移动数据的大规模集合带来了严重的隐私问题。而不是通过向原始位置数据添加噪声来扰乱数据以保留个人的隐私,而是一种方法,它提出了一种方法,该方法在具有概率数据结构计数 - MIN草图(CMS)中聚合移动数据集的统计数据集的统计水平(CMS)[1]已广泛用于提供具有可调误差绑定的有效统计功能的高效统计功能。我们使用CMS来估计Mobility Datasets中的人口密度分布,其中错误绑定确定实用程序保证。我们开发P4Mobi,一种新颖的概率隐私保留发布的发布框架,用于保护个人隐私,同时遵守特定的实用性要求。我们通过使用两个现实世界数据集来证明其对最近提出的重建攻击模型的恢复能力来验证P4Mobi的表现。我们将P4Mobi与两种最先进的方法进行比较,并表明,通过对我们的攻击模型实现的相同水平,P4Mobi显着提高了发布的移动数据集的效用高达20%。我们还提供了P4Mobi实现的实用程序的理论估计。我们在P4Mobi的估计和经验实用程序之间找到了一个非常一致的匹配,如两个数据集评估的p4mobi。

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