Privately Learning High-Dimensional Distributions
Abstract
We present novel, computationally efficient, and differentially private algorithms for two fundamental high-dimensional learning problems: learning a multivariate Gaussian and learning a product distribution over the Boolean hypercube in total variation distance. The sample complexity of our algorithms nearly matches the sample complexity of the optimal non-private learners for these tasks in a wide range of parameters, showing that privacy comes essentially for free for these problems. In particular, in contrast to previous approaches, our algorithm for learning Gaussians does not require strong a priori bounds on the range of the parameters. Our algorithms introduce a novel technical approach to reducing the sensitivity of the estimation procedure that we call recursive private preconditioning.
Cite
@article{arxiv.1805.00216,
title = {Privately Learning High-Dimensional Distributions},
author = {Gautam Kamath and Jerry Li and Vikrant Singhal and Jonathan Ullman},
journal= {arXiv preprint arXiv:1805.00216},
year = {2019}
}
Comments
To appear in COLT 2019