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Polynomial Time and Private Learning of Unbounded...
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Polynomial Time and Private Learning of Unbounded Gaussian Mixture Models

Abstract

We study the problem of privately estimating the parameters of d-dimensional Gaussian Mixture Models (GMMs) with k components. For this, we develop a technique to reduce the problem to its non-private counterpart. This allows us to privatize existing non-private algorithms in a blackbox manner, while incurring only a small overhead in the sample complexity and running time. As the main application of our framework, we develop an (ε, δ)-differentially private algorithm to learn GMMs using the non-private algorithm of Moitra & Valiant (2010) as a blackbox. Consequently, this gives the first sample complexity upper bound and first polynomial time algorithm for privately learning GMMs without any boundedness assumptions on the parameters. As part of our analysis, we prove a tight (up to a constant factor) lower bound on the total variation distance of high-dimensional Gaussians which can be of independent interest.

Authors

Arbas J; Ashtiani H; Liaw C

Volume

202

Pagination

pp. 1018-1040

Publication Date

January 1, 2023

Conference proceedings

Proceedings of Machine Learning Research

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