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Tight Analysis of Privacy and Utility Tradeoff in Approximate Differential Privacy

机译:近似差异隐私的隐私和实用权重权的严格分析

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We characterize the minimum noise amplitude and power for noise-adding mechanisms in (epsilon, delta)-differential privacy for single real-valued query function. We derive new lower bounds using the duality of linear programming, and new upper bounds by analyzing a special class of (epsilon, delta)-differentially private mechanisms, the truncated Laplacian mechanisms. We show that the multiplicative gap of the lower bounds and upper bounds goes to zero in various high privacy regimes, proving the tightness of the lower and upper bounds. In particular, our results close the previous constant multiplicative gap in the discrete setting. Numeric experiments show the improvement of the truncated Laplacian mechanism over the optimal Gaussian mechanism in all privacy regimes.
机译:我们在单个实值查询函数中表征了(epsilon,delta) - zifferentive隐私中的最小噪声幅度和功率。我们使用线性编程的二元性获得新的下限,并通过分析特殊的(epsilon,delta) - 截断的拉普拉斯机制来分析新的上限。我们表明,各种高隐私制度的下限和上限的乘法间隙为零,证明了下限和上限的紧张性。特别是,我们的结果在离散设置中关闭了先前的常量乘法间隙。数字实验表明,在所有隐私制度中的最佳高斯机制上改善了截头拉普拉斯机制。

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