This paper introduces a new extragradient-type algorithm for a class of nonconvex-nonconcave minimax problems. It is well-known that finding a local solution for general minimax problems is computationally intractable. This observation has recently motivated the study of structures sufficient for convergence of first order methods in the more general setting of variational inequalities when the so-called weak Minty variational inequality (MVI) holds. This problem class captures non-trivial structures as we demonstrate with examples, for which a large family of existing algorithms provably converge to limit cycles. Our results require a less restrictive parameter range in the weak MVI compared to what is previously known, thus extending the applicability of our scheme. The proposed algorithm is applicable to constrained and regularized problems, and involves an adaptive stepsize allowing for potentially larger stepsizes. Our scheme also converges globally even in settings where the underlying operator exhibits limit cycles.
翻译:本文为一类非convex-nonconcev 微型负载问题引入了一种新的超高级算法类型。 众所周知, 找到本地解决一般微型负载问题的方法在计算上是难以解决的。 最近,这一观察促使对结构进行研究,以在所谓微弱的Minty变异不平等(MVI)存在的情况下,在更普遍的变异不平等情况下,将一级方法集中起来。 这一问题类为我们所展示的非三重结构所捕捉,我们用实例来证明, 大量现有算法可以集中到一个限制周期。 我们的结果要求弱小负载的参数范围比以前已知的要小, 从而扩大我们的计划的适用性。 提议的算法适用于限制和规范的问题, 并涉及适应性步骤, 允许潜在的更大级级。 我们的计划也在全球范围内趋聚在一起, 即使基本操作者展示了限制周期。