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Practical Differential Privacy via Grouping and Smoothing

机译:通过分组和平滑的实用差异隐私

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We address one-time publishing of non-overlapping counts with ε-differential privacy. These statistics are useful in a wide and important range of applications, including trans-actional, traffic and medical data analysis. Prior work on the topic publishes such statistics with prohibitively low utility in several practical scenarios. Towards this end, we present GS, a method that pre-processes the counts by elaborately grouping and smoothing them via averaging. This step acts as a form of preliminary perturbation that diminishes sensitivity, and enables GS to achieve e-differential privacy through low Laplace noise injection. The grouping strategy is dictated by a sampling mechanism, which minimizes the smoothing perturbation. We demonstrate the superiority of GS over its competitors, and confirm its practicality, via extensive experiments on real datasets.
机译:我们通过ε - 差异隐私来处理一次性出版非重叠计数。这些统计数据在广泛而重要的应用范围内有用,包括跨动机,流量和医疗数据分析。在此主题的前面的工作发布此类统计信息,在几种实际情况下,具有额外低的实用程序。朝向此结束,我们呈现GS,一种方法通过精心分组和平均平均来预先处理计数。该步骤充当初步扰动的形式,可以通过低拉普拉斯噪声注入来实现敏感性的初步扰动,并使GS能够通过低拉地位噪声注入实现电子差异隐私。分组策略由采样机制决定,从而最大限度地减少平滑扰动。我们展示了GS对其竞争对手的优越性,并通过对实际数据集的大量实验来证实其实用性。

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