We present a generic framework for creating differentially private versions of any hypothesis test in a black-box way. We analyze the resulting tests analytically and experimentally. Most crucially, we show good practical performance for small data sets, showing that at epsilon = 1 we only need 5-6 times as much data as in the fully public setting. We compare our work to the one existing framework of this type, as well as to several individually-designed private hypothesis tests. Our framework is higher power than other generic solutions and at least competitive with (and often better than) individually-designed tests.
翻译:我们提出了一个通用框架,用于以黑盒方式创建任何假设测试的不同私人版本。我们从分析和实验角度分析了由此产生的测试结果。最重要的是,我们展示了小数据集的良好实际性能,显示在epsilon = 1 时,我们所需要的数据只是完全公开环境中的数据的5-6倍。我们将我们的工作与这种类型的现有框架以及若干个个体设计的私人假设测试进行比较。我们的框架比其他通用解决方案更强大,至少与个人设计的测试相比具有竞争力(而且往往更好 ) 。