具有隐私保证的自适应错误发现率控制

Xintao Xia, Zhanrui Cai
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引用次数: 0

摘要

差异私有多重测试程序可以保护假设测试中使用的个人信息,同时保证一小部分错误发现。在本文中,我们提出了一种差分私有自适应FDR控制方法,该方法可以在用户指定的水平$\alpha$上精确地控制经典FDR度量,并且具有隐私保证,与Dwork等人(2021)提出的差分私有Benjamini-Hochberg方法相比,这是一个重要的改进。我们的分析基于两个关键见解:1)一种新颖的p值变换,既保留隐私又保留镜像保守性;2)一种镜像剥离算法,允许构建过滤并应用最优停止技术。数值研究表明,与现有的差分私有FDR控制方法相比,所提出的DP-AdaPT控制方法具有更好的性能。与非私有的AdaPT相比,它的精度损失很小,但大大降低了计算成本。
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Adaptive False Discovery Rate Control with Privacy Guarantee
Differentially private multiple testing procedures can protect the information of individuals used in hypothesis tests while guaranteeing a small fraction of false discoveries. In this paper, we propose a differentially private adaptive FDR control method that can control the classic FDR metric exactly at a user-specified level $\alpha$ with privacy guarantee, which is a non-trivial improvement compared to the differentially private Benjamini-Hochberg method proposed in Dwork et al. (2021). Our analysis is based on two key insights: 1) a novel p-value transformation that preserves both privacy and the mirror conservative property, and 2) a mirror peeling algorithm that allows the construction of the filtration and application of the optimal stopping technique. Numerical studies demonstrate that the proposed DP-AdaPT performs better compared to the existing differentially private FDR control methods. Compared to the non-private AdaPT, it incurs a small accuracy loss but significantly reduces the computation cost.
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