Adaptive Primal-Dual Stochastic Gradient Method for Expectation-constrained Convex Stochastic Programs
Yonggui Yan, Yangyang Xu

TL;DR
This paper introduces an adaptive primal-dual stochastic gradient method for expectation-constrained convex stochastic programs, achieving faster convergence than existing methods and extending to stochastic minimax problems.
Contribution
It proposes a novel adaptive primal-dual SGM that accelerates convergence for expectation-constrained stochastic optimization and extends to minimax problems.
Findings
Achieves $O(1/ oot{2}k)$ convergence rate for objective and constraint violation.
Demonstrates significantly faster convergence than non-adaptive methods in experiments.
Extends the approach to stochastic minimax problems with similar convergence guarantees.
Abstract
Stochastic gradient methods (SGMs) have been widely used for solving stochastic optimization problems. A majority of existing works assume no constraints or easy-to-project constraints. In this paper, we consider convex stochastic optimization problems with expectation constraints. For these problems, it is often extremely expensive to perform projection onto the feasible set. Several SGMs in the literature can be applied to solve the expectation-constrained stochastic problems. We propose a novel primal-dual type SGM based on the Lagrangian function. Different from existing methods, our method incorporates an adaptiveness technique to speed up convergence. At each iteration, our method inquires an unbiased stochastic subgradient of the Lagrangian function, and then it renews the primal variables by an adaptive-SGM update and the dual variables by a vanilla-SGM update. We show that the…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Sparse and Compressive Sensing Techniques · Risk and Portfolio Optimization
