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Locally Private Hypothesis Testing

机译:本地私人假设检验

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We initiate the study of differentially private hypothesis testing in the local-model, under both the standard (symmetric) randomized-response mechanism (Warner 1965, Kasiviswanathan et al, 2008) and the newer (non-symmetric) mechanisms (Bassily & Smith, 2015, Bassily et al, 2017). First, we study the general framework of mapping each user’s type into a signal and show that the problem of finding the maximum-likelihood distribution over the signals is feasible. Then we discuss the randomized-response mechanism and show that, in essence, it maps the null- and alternative-hypotheses onto new sets, an affine translation of the original sets. We then give sample complexity bounds for identity and independence testing under randomized-response. We then move to the newer non-symmetric mechanisms and show that there too the problem of finding the maximum-likelihood distribution is feasible. Under the mechanism of Bassily et al we give identity and independence testers with better sample complexity than the testers in the symmetric case, and we also propose a $chi^2$-based identity tester which we investigate empirically.
机译:我们在标准(对称)随机响应机制(Warner 1965,Kasiviswanathan等,2008)和更新(非对称)机制(Bassily&Smith,2000)下,在局部模型中启动差异私人假设检验的研究。 2015,Bassily等,2017)。首先,我们研究了将每个用户的类型映射到信号中的一般框架,并表明找到在信号上的最大似然分布的问题是可行的。然后,我们讨论了随机响应机制,并证明了从本质上讲,它会将零假设和替代假设映射到新集合上,即原始集合的仿射翻译。然后,我们为随机响应下的身份和独立性测试提供了样本复杂性范围。然后,我们转向较新的非对称机制,并表明发现最大似然分布的问题也是可行的。在Bassily等人的机制下,我们为身份和独立性测试人员提供了比对称情况下的测试人员更好的样本复杂度,并且我们还提出了基于$ chi ^ 2 $的身份测试人员进行实证研究。

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