Privacy-Preserving Inference on the Ratio of Two Gaussians Using Sums

Jingang Miao, Yiming Paul Li
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Abstract

The ratio of two Gaussians is useful in many contexts of statistical inference. We discuss statistically valid inference of the ratio under Differential Privacy (DP). We use the delta method to derive the asymptotic distribution of the ratio estimator and use the Gaussian mechanism to provide (epsilon, delta)-DP guarantees. Like many statistics, quantities involved in the inference of a ratio can be re-written as functions of sums, and sums are easy to work with for many reasons. In the context of DP, the sensitivity of a sum is easy to calculate. We focus on getting the correct coverage probability of 95% confidence intervals (CIs) of the DP ratio estimator. Our simulations show that the no-correction method, which ignores the DP noise, gives CIs that are too narrow to provide proper coverage for small samples. In our specific simulation scenario, the coverage of 95% CIs can be as low as below 10%. We propose two methods to mitigate the under-coverage issue, one based on Monte Carlo simulation and the other based on analytical correction. We show that the CIs of our methods have much better coverage with reasonable privacy budgets. In addition, our methods can handle weighted data, when the weights are fixed and bounded.
基于和的两个Gaussian比率的保密推理
两个高斯的比率在统计推断的许多情况下都是有用的。我们讨论了在差分隐私(DP)条件下对比率的统计有效推断。我们使用delta方法来导出比率估计器的渐近分布,并使用高斯机制来提供(ε,delta)-DP保证。像许多统计学一样,比率推断中涉及的量可以重写为和的函数,由于多种原因,和很容易处理。在DP的上下文中,求和的灵敏度很容易计算。我们专注于获得DP比率估计器的95%置信区间(CI)的正确覆盖概率。我们的模拟表明,忽略DP噪声的无校正方法给出的CI太窄,无法为小样本提供适当的覆盖范围。在我们的特定模拟场景中,95%CI的覆盖率可以低至10%以下。我们提出了两种方法来缓解覆盖不足问题,一种是基于蒙特卡罗模拟,另一种是分析校正。我们表明,在合理的隐私预算下,我们方法的CI具有更好的覆盖率。此外,当权重是固定的和有界的时,我们的方法可以处理加权数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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