Two-Timescale Gradient Descent Ascent Algorithms for Nonconvex Minimax Optimization
Tianyi Lin, Chi Jin, Michael. I. Jordan

TL;DR
This paper introduces two-timescale gradient descent ascent algorithms for nonconvex minimax problems, providing convergence guarantees and complexity bounds, especially useful for training GANs and other applications.
Contribution
It is the first systematic analysis of TTGDA for nonconvex minimax optimization, extending effectiveness beyond convex-concave settings.
Findings
Effective TTGDA algorithms for nonconvex minimax problems
Theoretical complexity bounds for smooth and nonsmooth cases
Superior performance demonstrated in GAN training
Abstract
We provide a unified analysis of two-timescale gradient descent ascent (TTGDA) for solving structured nonconvex minimax optimization problems in the form of , where the objective function is nonconvex in and concave in , and the constraint set is convex and bounded. In the convex-concave setting, the single-timescale gradient descent ascent (GDA) algorithm is widely used in applications and has been shown to have strong convergence guarantees. In more general settings, however, it can fail to converge. Our contribution is to design TTGDA algorithms that are effective beyond the convex-concave setting, efficiently finding a stationary point of the function . We also establish…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Photoacoustic and Ultrasonic Imaging · Optical Imaging and Spectroscopy Techniques
MethodsSparse Evolutionary Training
