Private Stochastic Optimization With Large Worst-Case Lipschitz Parameter
Andrew Lowy, Meisam Razaviyayn

TL;DR
This paper develops new differentially private stochastic optimization methods that work effectively with loss functions having large or infinite worst-case Lipschitz parameters, especially in heavy-tailed data scenarios.
Contribution
It introduces risk bounds independent of the uniform Lipschitz constant, handles non-smooth and non-convex loss functions, and provides algorithms with near-optimal excess risk.
Findings
Risk bounds scale with the $k$-th moment of stochastic gradients.
Algorithms achieve state-of-the-art excess risk in linear time for smooth convex losses.
First algorithms for non-smooth convex and non-convex Proximal-PL loss functions.
Abstract
We study differentially private (DP) stochastic optimization (SO) with loss functions whose worst-case Lipschitz parameter over all data may be extremely large or infinite. To date, the vast majority of work on DP SO assumes that the loss is uniformly Lipschitz continuous (i.e. stochastic gradients are uniformly bounded) over data. While this assumption is convenient, it often leads to pessimistic risk bounds. In many practical problems, the worst-case (uniform) Lipschitz parameter of the loss over all data may be huge due to outliers and/or heavy-tailed data. In such cases, the risk bounds for DP SO, which scale with the worst-case Lipschitz parameter, are vacuous. To address these limitations, we provide improved risk bounds that do not depend on the uniform Lipschitz parameter. Following a recent line of work [WXDX20, KLZ22], we assume that stochastic gradients have bounded -th…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Sparse and Compressive Sensing Techniques · Advanced Bandit Algorithms Research
