Faster Rates of Private Stochastic Convex Optimization
Jinyan Su, Lijie Hu, Di Wang

TL;DR
This paper introduces faster private stochastic convex optimization algorithms for functions satisfying the Tysbakov Noise Condition and strongly convex functions, achieving improved risk bounds under differential privacy constraints.
Contribution
It provides new algorithms with faster convergence rates for DP-SCO on specific function classes, extending previous results and establishing lower bounds.
Findings
Achieves upper bounds of tenilde;O((1/\u221a{n} + \u221a{d log(1/\u03b4})/(n}))^{ heta/( heta-1)} for P with P risk.
Improves bounds by poly(log n) factors and extends to ar{ heta}>1.
Establishes lower bounds on excess risk for functions satisfying TNC with P and (,elta)-DP.
Abstract
In this paper, we revisit the problem of Differentially Private Stochastic Convex Optimization (DP-SCO) and provide excess population risks for some special classes of functions that are faster than the previous results of general convex and strongly convex functions. In the first part of the paper, we study the case where the population risk function satisfies the Tysbakov Noise Condition (TNC) with some parameter . Specifically, we first show that under some mild assumptions on the loss functions, there is an algorithm whose output could achieve an upper bound of for -DP when , here is the sample size and is the dimension of the space. Then we address the inefficiency issue, improve the upper bounds by …
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Taxonomy
TopicsMarkov Chains and Monte Carlo Methods · Stochastic Gradient Optimization Techniques · Risk and Portfolio Optimization
