Private Stochastic Convex Optimization with Heavy Tails: Near-Optimality from Simple Reductions

June 04, 2024 Β· Declared Dead Β· πŸ› Neural Information Processing Systems

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Authors Hilal Asi, Daogao Liu, Kevin Tian arXiv ID 2406.02789 Category cs.DS: Data Structures & Algorithms Cross-listed cs.CR, cs.LG, stat.ML Citations 7 Venue Neural Information Processing Systems Last Checked 4 months ago
Abstract
We study the problem of differentially private stochastic convex optimization (DP-SCO) with heavy-tailed gradients, where we assume a $k^{\text{th}}$-moment bound on the Lipschitz constants of sample functions rather than a uniform bound. We propose a new reduction-based approach that enables us to obtain the first optimal rates (up to logarithmic factors) in the heavy-tailed setting, achieving error $G_2 \cdot \frac 1 {\sqrt n} + G_k \cdot (\frac{\sqrt d}{nΞ΅})^{1 - \frac 1 k}$ under $(Ξ΅, Ξ΄)$-approximate differential privacy, up to a mild $\textup{polylog}(\frac{1}Ξ΄)$ factor, where $G_2^2$ and $G_k^k$ are the $2^{\text{nd}}$ and $k^{\text{th}}$ moment bounds on sample Lipschitz constants, nearly-matching a lower bound of [Lowy and Razaviyayn 2023]. We further give a suite of private algorithms in the heavy-tailed setting which improve upon our basic result under additional assumptions, including an optimal algorithm under a known-Lipschitz constant assumption, a near-linear time algorithm for smooth functions, and an optimal linear time algorithm for smooth generalized linear models.
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