MLLGOCSTJan 7, 2025

Mixing Times and Privacy Analysis for the Projected Langevin Algorithm under a Modulus of Continuity

arXiv:2501.04134v22 citationsh-index: 3
Originality Incremental advance
AI Analysis

This work addresses privacy and convergence analysis in machine learning optimization, particularly for convex losses, but is incremental as it extends existing frameworks like PABI.

The paper tackles the problem of analyzing mixing times for the projected Langevin algorithm and privacy curves for noisy SGD beyond nonexpansive iterations, deriving dimension-free and poly-logarithmic bounds in some cases and establishing new privacy bounds dependent on gradient regularity.

We study the mixing time of the projected Langevin algorithm (LA) and the privacy curve of noisy Stochastic Gradient Descent (SGD), beyond nonexpansive iterations. Specifically, we derive new mixing time bounds for the projected LA which are, in some important cases, dimension-free and poly-logarithmic on the accuracy, closely matching the existing results in the smooth convex case. Additionally, we establish new upper bounds for the privacy curve of the subsampled noisy SGD algorithm. These bounds show a crucial dependency on the regularity of gradients, and are useful for a wide range of convex losses beyond the smooth case. Our analysis relies on a suitable extension of the Privacy Amplification by Iteration (PABI) framework (Feldman et al., 2018; Altschuler and Talwar, 2022, 2023) to noisy iterations whose gradient map is not necessarily nonexpansive. This extension is achieved by designing an optimization problem which accounts for the best possible Rényi divergence bound obtained by an application of PABI, where the tractability of the problem is crucially related to the modulus of continuity of the associated gradient mapping. We show that, in several interesting cases -- namely the nonsmooth convex, weakly smooth and (strongly) dissipative -- such optimization problem can be solved exactly and explicitly, yielding the tightest possible PABI-based bounds.

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