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A MODEL REFERENCE ADAPTIVE SEARCH METHOD FOR STOCHASTIC GLOBAL OPTIMIZATION

机译:随机全局最优化的模型参考自适应搜索方法

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摘要

We propose a randomized search method called Stochastic Model Reference Adaptive Search (SMRAS) for solving stochastic optimization problems in situations where the objective functions cannot be evaluated exactly, but can be estimated with some noise (or uncertainty), e.g., via simulation. The method generalizes the recently proposed Model Reference Adaptive Search (MRAS) for deterministic optimization, which is motivated by the well-known Cross-Entropy (CE) method. We prove global convergence of SMRAS in a general stochastic setting, and carry out numerical studies to illustrate its performance. An emphasis of this paper is on the application of SMRAS for solving static stochastic optimization problems; its various applications for solving dynamic decision making problems can be found in [7].
机译:我们提出了一种随机搜索方法,称为随机模型参考自适应搜索(SMRAS),用于解决无法精确评估目标函数但可以通过一些噪声(或不确定性)估算目标函数的情况(例如通过仿真)的情况。该方法概括了最近提出的用于确定性优化的模型参考自适应搜索(MRAS),这是由众所周知的交叉熵(CE)方法推动的。我们证明了在一般随机情况下SMRAS的全局收敛性,并进行了数值研究以说明其性能。本文的重点是SMRAS在解决静态随机优化问题中的应用。它在解决动态决策问题中的各种应用可以在[7]中找到。

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