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On the Application of Danskin's Theorem to Derivative-Free Minimax Problems

机译:关于DANSKIN的定理在无衍生物最小问题的应用

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Motivated by Danskin's theorem, gradient-based methods have been applied with empirical success to solve minimax problems that involve non-convex outer minimization and non-concave inner maximization. On the other hand, recent work has demonstrated that Evolution Strategies (ES) algorithms are stochastic gradient approximators that seek robust solutions. In this paper, we address black-box (gradient-free) minimax problems that have long been tackled in a coevolutionary setup. To this end and guaranteed by Danskin's theorem, we employ ES as a stochastic estimator for descent directions. The proposed approach is validated on a collection of black-box minimax problems. Based on our experiments, our method's performance is comparable with its coevolutionary counterparts and favorable for high -dimensional problems. Its efficacy is demonstrated on a real-world application.
机译:由Danskin的定理激励,基于梯度的方法应用了实证成功,以解决涉及非凸外部最小化和非凹入内部最大化的极小问题。另一方面,最近的工作表明,演化策略是寻求强大解决方案的随机梯度近似器。在本文中,我们地址已在共带化设置中解决的黑盒(无梯度)最小的问题。达到此目的并保证Danskin的定理,我们雇用作为下降方向的随机估计器。建议的方法验证了黑盒子最小问题的集合。基于我们的实验,我们的方法的性能与其共乐的同行相当,有利于高度的问题。它的疗效在真实的应用中证明。

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