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Differentially Private Identity and Equivalence Testing of Discrete Distributions

机译:离散分布的差分私有身份和对等测试

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We study the fundamental problems of identity and equivalence testing over a discrete population from random samples. Our goal is to develop efficient testers while guaranteeing differential privacy to the individuals of the population. We provide sample-efficient differentially private testers for these problems. Our theoretical results significantly improve over the best known algorithms for identity testing, and are the first results for private equivalence testing. The conceptual message of our work is that there exist private hypothesis testers that are nearly as sample-efficient as their non-private counterparts. We perform an experimental evaluation of our algorithms on synthetic data. Our experiments illustrate that our private testers achieve small type I and type II errors with sample size sublinear in the domain size of the underlying distributions.
机译:我们研究了随机样本中离散种群的同一性和等效性测试的基本问题。我们的目标是开发高效的测试仪,同时确保人群中个体的隐私差异。我们为这些问题提供了具有样本效率的差分私人测试仪。我们的理论结果大大优于已知的身份测试算法,并且是私有等效测试的第一个结果。我们工作的概念性信息是,存在私人假设检验者,其抽样效率几乎与非私人检验者一样。我们对合成数据进行算法的实验评估。我们的实验表明,我们的私人测试人员在基础分布的域大小中样本大小为次线性,实现了小的I型和II型错误。

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