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A Private and Computationally-Efficient Estimator for Unbounded Gaussians

8 November 2021
Gautam Kamath
Argyris Mouzakis
Vikrant Singhal
Thomas Steinke
Jonathan R. Ullman
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Abstract

We give the first polynomial-time, polynomial-sample, differentially private estimator for the mean and covariance of an arbitrary Gaussian distribution N(μ,Σ)\mathcal{N}(\mu,\Sigma)N(μ,Σ) in Rd\mathbb{R}^dRd. All previous estimators are either nonconstructive, with unbounded running time, or require the user to specify a priori bounds on the parameters μ\muμ and Σ\SigmaΣ. The primary new technical tool in our algorithm is a new differentially private preconditioner that takes samples from an arbitrary Gaussian N(0,Σ)\mathcal{N}(0,\Sigma)N(0,Σ) and returns a matrix AAA such that AΣATA \Sigma A^TAΣAT has constant condition number.

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