Efficient Mean Estimation with Pure Differential Privacy via a Sum-of-Squares Exponential Mechanism
Samuel B. Hopkins, Gautam Kamath, Mahbod Majid

TL;DR
This paper introduces a polynomial-time algorithm for mean estimation under pure differential privacy with near-optimal sample complexity, leveraging Sum of Squares techniques to bridge private and robust statistics.
Contribution
It presents the first efficient algorithm for high-dimensional mean estimation with pure differential privacy using SoS methods, achieving optimal sample complexity.
Findings
Achieves $ ilde{O}(d)$ sample complexity for private mean estimation.
Uses Sum of Squares proofs to convert exponential mechanisms into polynomial-time algorithms.
Connects differential privacy techniques with robust statistics via SoS proofs.
Abstract
We give the first polynomial-time algorithm to estimate the mean of a -variate probability distribution with bounded covariance from independent samples subject to pure differential privacy. Prior algorithms for this problem either incur exponential running time, require samples, or satisfy only the weaker concentrated or approximate differential privacy conditions. In particular, all prior polynomial-time algorithms require samples to guarantee small privacy loss with "cryptographically" high probability, , while our algorithm retains sample complexity even in this stringent setting. Our main technique is a new approach to use the powerful Sum of Squares method (SoS) to design differentially private algorithms. SoS proofs to algorithms is a key theme in numerous recent works in high-dimensional…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Adversarial Robustness in Machine Learning
