一种改进的随机nelder-mead数值优化算法

Zhiyu Li, Yi Zhan
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引用次数: 7

摘要

随机Nelder-Mead算法是在经典Nelder-Mead算法的基础上发展起来的一种直接搜索方法,用于求解无导数、非线性、黑盒随机优化问题。影响其性能的一个关键因素是对随机噪声下的单纯形点进行合理的排序。本文提出了一种将选择排序算法与统计假设检验方法相结合的排序方法。该程序提供了一种有效的“细颗粒”重新采样方案,其中样本量可以更精确地估计,并具有更大的灵活性。数值研究表明,改进后的算法在精度和稳定性方面都优于原算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A revised stochastic nelder-mead algorithm for numerical optimization
The Stochastic Nelder-Mead, a recently developed variant of the classic Nelder-Mead algorithm, is a direct search method for derivative-free, nonlinear and black-box stochastic optimization problem. A key factor that influences its performance is obtaining reasonable rankings on the simplex points with random noise. We propose a new ranking procedure that integrates a selection sorting algorithm with statistical hypothesis testing method. This procedure provides an efficient `fine-granular' re-sampling scheme in which the sample sizes can be estimated more precisely and with more flexibility. A numerical study indicates that the revised algorithm can generally outperform its original in terms of both accuracy and stability.
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