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Zipf distribution model for quantifying risk of re-identification from trajectory data

机译:Zipf分布模型,用于从轨迹数据量化重新识别的风险

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In this paper, we proposes a new mathematical model for evaluating a given anonymized dataset that needs to be reidentified. Many anonymization algorithms have been proposed in the area called privacy-preserving data publishing (PPDP), but, no anonymization algorithms are suitable for all scenarios because many factors are involved. In order to address the issues of anonymization, we propose a new mathematical model based on the Zipf distribution. Our model is simple, but it fits well with the real distribution of trajectory data. We demonstrate the primary property of our model and we extend it to a more complex environment. Using our model, we define the theoretical bound for reidentification, which yields the appropriate optimal level for anonymization.
机译:在本文中,我们提出了一种新的数学模型,用于评估需要重新识别的给定匿名数据集。已经在称为隐私保护数据发布(PPDP)的领域中提出了许多匿名化算法,但是由于涉及许多因素,因此没有适合所有情况的匿名化算法。为了解决匿名化的问题,我们提出了一个基于Zipf分布的新数学模型。我们的模型很简单,但是非常适合轨迹数据的实际分布。我们演示了模型的主要特性,并将其扩展到更复杂的环境。使用我们的模型,我们定义了重新识别的理论界限,这为匿名化提供了适当的最佳水平。

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