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Differentially Private Identity and Closeness Testing of Discrete Distributions
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We investigate the problems of identity and closeness 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 describe an approach that yields sample-efficient differentially private testers for these problems. Our theoretical results show that there exist private identity and closeness 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.
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Cited by 1 Pith paper
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Differentially Private Verification of Distribution Properties
Initiates DP prover-aided distribution property verification, with private-to-public coin reductions for ε=O(1/√n) and an optimal MA protocol for product distribution testing.
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