From Noisy Fixed-Point Iterations to Private ADMM for Centralized and Federated Learning
Abstract
We study differentially private (DP) machine learning algorithms as instances of noisy fixed-point <PRE_TAG>iterations</POST_TAG>, 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 de<PRE_TAG>centralized learning</POST_TAG>. 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 <PRE_TAG>iterations</POST_TAG>.
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