Publication | Open Access
Optimistic mirror descent in saddle-point problems: Going the extra (gradient) mile
111
Citations
2
References
2018
Year
Mathematical ProgrammingArtificial IntelligenceLarge-scale Global OptimizationEngineeringMachine LearningAdversarial Machine LearningDerivative-free OptimizationGenerative ModelApproximation TheoryLinear OptimizationContinuous OptimizationLarge Scale OptimizationInverse ProblemsComputer ScienceOptimistic Gradient DescentDeep LearningGenerative Adversarial NetworkOptimistic Mirror DescentConvex OptimizationMirror DescentSaddle-point ProblemsGenerative Ai
Owing to their connection with generative adversarial networks (GANs), saddle-point problems have recently attracted considerable interest in machine learning and beyond. By necessity, most theoretical guarantees revolve around convex-concave (or even linear) problems; however, making theoretical inroads towards efficient GAN training depends crucially on moving beyond this classic framework. To make piecemeal progress along these lines, we analyze the behavior of mirror descent (MD) in a class of non-monotone problems whose solutions coincide with those of a naturally associated variational inequality - a property which we call coherence. We first show that ordinary, "vanilla" MD converges under a strict version of this condition, but not otherwise; in particular, it may fail to converge even in bilinear models with a unique solution. We then show that this deficiency is mitigated by optimism: by taking an "extra-gradient" step, optimistic mirror descent (OMD) converges in all coherent problems. Our analysis generalizes and extends the results of Daskalakis et al. (2018) for optimistic gradient descent (OGD) in bilinear problems, and makes concrete headway for establishing convergence beyond convex-concave games. We also provide stochastic analogues of these results, and we validate our analysis by numerical experiments in a wide array of GAN models (including Gaussian mixture models, as well as the CelebA and CIFAR-10 datasets).
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