Privately Estimating a Gaussian: Efficient, Robust and Optimal
Daniel Alabi, Pravesh K. Kothari, Pranay Tankala, Prayaag Venkat, Fred, Zhang

TL;DR
This paper introduces efficient, robust, and optimal algorithms for privately estimating Gaussian distributions under differential privacy constraints, achieving near-optimal sample complexity and handling outliers.
Contribution
It provides the first efficient algorithms for private Gaussian estimation with optimal dependence on dimension and outlier robustness, matching non-private bounds.
Findings
Pure DP algorithm estimates Gaussian with optimal sample complexity.
Approximate DP algorithm achieves near-linear sample complexity for mean estimation.
New lower bounds show tight dependence on the condition number in private covariance estimation.
Abstract
In this work, we give efficient algorithms for privately estimating a Gaussian distribution in both pure and approximate differential privacy (DP) models with optimal dependence on the dimension in the sample complexity. In the pure DP setting, we give an efficient algorithm that estimates an unknown -dimensional Gaussian distribution up to an arbitrary tiny total variation error using samples while tolerating a constant fraction of adversarial outliers. Here, is the condition number of the target covariance matrix. The sample bound matches best non-private estimators in the dependence on the dimension (up to a polylogarithmic factor). We prove a new lower bound on differentially private covariance estimation to show that the dependence on the condition number in the above sample bound is also tight. Prior to our work, only…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Adversarial Robustness in Machine Learning · Cryptography and Data Security
