ASTRO-DF: Adaptive sampling trust-region optimization algorithms, heuristics, and numerical experience

S. Shashaani, S. R. Hunter, R. Pasupathy
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引用次数: 8

Abstract

ASTRO-DF is a class of adaptive sampling algorithms for solving simulation optimization problems in which only estimates of the objective function are available by executing a Monte Carlo simulation. ASTRO-DF algorithms are iterative trust-region algorithms, where a local model is repeatedly constructed and optimized as iterates evolve through the search space. The ASTRO-DF class of algorithms is derivative-free in the sense that it does not rely on direct observations of the function derivatives. A salient feature of ASTRO-DF is the incorporation of adaptive sampling and replication to keep the model error and the trust-region radius in lock-step, to ensure efficiency. ASTRO-DF has been demonstrated to generate iterates that globally converge to a first-order critical point with probability one. In this paper, we describe and list ASTRO-DF, and discuss key heuristics that ensure good finite-time performance. We report our numerical experience with ASTRO-DF on test problems in low to moderate dimensions.
ASTRO-DF:自适应采样信任区域优化算法,启发式和数值经验
ASTRO-DF是一类自适应采样算法,用于解决模拟优化问题,其中通过执行蒙特卡罗模拟只能获得目标函数的估计。ASTRO-DF算法是一种迭代的信任域算法,在该算法中,局部模型会随着迭代在搜索空间中的进化而被重复构建和优化。ASTRO-DF类算法是无导数的,因为它不依赖于对函数导数的直接观察。ASTRO-DF的一个显著特点是结合了自适应采样和复制,以保持模型误差和信任区域半径在锁步内,以确保效率。ASTRO-DF已被证明可以生成全局收敛于概率为1的一阶临界点的迭代。在本文中,我们描述和列出了ASTRO-DF,并讨论了确保良好有限时间性能的关键启发式方法。我们报告了ASTRO-DF在低至中等尺寸测试问题上的数值经验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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