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From Noisy Fixed-Point Iterations to Private ADMM for Centralized and Federated Learning

A framework viewing differentially private machine learning as noisy fixed-point iterations enables the design and analysis of private optimization algorithms, including novel private ADMM methods for centralized, federated, and decentralized learning, with strong privacy and utility guarantees.

Year
2023
Venue
arXiv 2023
Authors
3
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arxiv.org/abs/2302.12559v3ARXIV-DEFAULT
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Abstract

We study differentially private (DP) machine learning algorithms as instances of noisy fixed-point iterations, in order to derive privacy and utility results from this well-studied framework. We show that this new perspective recovers popular private gradient-based methods like DP-SGD and provides a principled way to design and analyze new private optimization algorithms in a flexible manner. Focusing on the widely-used Alternating Directions Method of Multipliers (ADMM) method, we use our general framework to derive novel private ADMM algorithms for centralized, federated and fully decentralized learning. For these three algorithms, we establish strong privacy guarantees leveraging privacy amplification by iteration and by subsampling. Finally, we provide utility guarantees using a unified analysis that exploits a recent linear convergence result for noisy fixed-point iterations.

Authors

3