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Robustness Implies Privacy in Statistical Estimation

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arxiv 2212.05015 v3 pith:26NRDZVK submitted 2022-12-09 cs.DS cs.CRcs.ITmath.ITstat.ML

Robustness Implies Privacy in Statistical Estimation

classification cs.DS cs.CRcs.ITmath.ITstat.ML
keywords privacyestimationestimatorshigh-dimensionalrobustnesscovariancefirstmean
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We study the relationship between adversarial robustness and differential privacy in high-dimensional algorithmic statistics. We give the first black-box reduction from privacy to robustness which can produce private estimators with optimal tradeoffs among sample complexity, accuracy, and privacy for a wide range of fundamental high-dimensional parameter estimation problems, including mean and covariance estimation. We show that this reduction can be implemented in polynomial time in some important special cases. In particular, using nearly-optimal polynomial-time robust estimators for the mean and covariance of high-dimensional Gaussians which are based on the Sum-of-Squares method, we design the first polynomial-time private estimators for these problems with nearly-optimal samples-accuracy-privacy tradeoffs. Our algorithms are also robust to a nearly optimal fraction of adversarially-corrupted samples.

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Cited by 3 Pith papers

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