高维数据差分隐私下两种均值向量的比较

Caizhu Huang, Di Wang, Yan Hu, N. Sartori
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引用次数: 0

摘要

-多元假设检验问题是当今高维数据统计推断中一个更有趣的任务,其中观察向量的维度是发散的,甚至可能大于样本量。然而,在多变量假设问题的许多应用中,数据是高度敏感的,需要隐私保护。在这里,我们考虑一个私有的非参数投影检验,用于高维多元均值向量的比较,保证了强差分隐私性。实证表明,差分隐私下的非参数投影检验在零假设下给出了准确的推断,在局部备择假设下给出了较高的幂次。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison Of Two Mean Vectors Under Differential Privacy For High-Dimensional Data
- The multivariate hypothesis testing problem is a more interesting task of the statistical inference for high-dimensional data nowadays, in which the dimension of the observation vectors is diverging and could even be larger than the sample size. However, in many applications of multivariate hypotheses problems, the data are highly sensitive and require privacy protection. Here we consider a private non-parametric projection test for the comparison of the high-dimensional multivariate mean vectors that guarantees strong differential privacy. The empirical evidence shows that the non-parametric projection test under differential privacy gives accurate inference under the null hypothesis and a higher power under the local alternative hypothesis.
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