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CONVERGENCE PROPERTIES OF DIRECT SEARCH METHODS FOR STOCHASTIC OPTIMIZATION

机译:随机优化直接搜索方法的收敛性

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Simulation is widely used to evaluate the performance and optimize the design of a complex system. In the past few decades, a great deal of research has been devoted to solving simulation optimization problems, perhaps owing to their generality. However, although there are many problems of practical interests that can be cast in the framework of simulation optimization, it is often difficult to obtain an understanding of their structure, making them very challenging. Direct search methods are a class of deterministic optimization methods particularly designed for black-box optimization problems. In this paper, we present a class of direct search methods for simulation optimization problems with stochastic noise. The optimization problem is approximated using a sample average approximation scheme. We propose an adaptive sampling scheme to improve the efficiency of direct search methods and prove the consistency of the solutions.
机译:仿真被广泛用于评估性能和优化复杂系统的设计。在过去的几十年中,可能是由于通用性,大量研究致力于解决仿真优化问题。但是,尽管在模拟优化的框架中可能会遇到许多具有实际意义的问题,但通常很难对它们的结构有所了解,这使它们非常具有挑战性。直接搜索方法是一类确定性优化方法,专门针对黑盒优化问题而设计。在本文中,我们提出了一类直接搜索方法,用于随机噪声的仿真优化问题。使用样本平均逼近方案来逼近优化问题。我们提出了一种自适应采样方案,以提高直接搜索方法的效率并证明解决方案的一致性。

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