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Differentially Private Data Sets Based on Microaggregation and Record Perturbation

机译:基于微识别和记录扰动的差异私有数据集

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摘要

We present an approach to generate differentially private data sets that consists in adding noise to a microaggregated version of the original data set. While this idea has already been proposed in the literature to reduce the data sensitivity and hence the noise required to reach differential privacy, the novelty of our approach is that we focus on the microaggregated data set as the target of protection, rather than focusing on the original data set and viewing the microaggregated data set as a mere intermediate step. As a result, we avoid the complexities inherent to the insensitive microaggregation used in previous contributions and we significantly improve the utility of the data. This claim is supported by theoretical and empirical utility comparisons between our approach and existing approaches.
机译:我们提出了一种生成差异私有数据集的方法,该数据集包括向原始数据集的微磁版版本添加噪声。虽然这个想法已经在文献中已经提出,但是降低数据敏感性,因此需要达到差异隐私所需的噪声,我们的方法是我们将微见的数据集重点放在保护的基础上,而不是专注于原始数据集并将微磁化数据设置为仅为中间步骤。因此,我们避免了先前贡献中使用的不敏感微识别固有的复杂性,并且我们显着提高了数据的效用。本索赔由我们的方法与现有方法之间的理论和经验效用比较支持。

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