The true destination of EGO is multi-local optimization

Simon Wessing, M. Preuss
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引用次数: 11

Abstract

Efficient global optimization is a popular algorithm for the optimization of expensive multimodal black-box functions. One important reason for its popularity is its theoretical foundation of global convergence. However, as the budgets in expensive optimization are very small, the asymptotic properties only play a minor role and the algorithm sometimes comes off badly in experimental comparisons. Many alternative variants have therefore been proposed over the years. In this work, we show experimentally that the algorithm instead has its strength in a setting where multiple optima are to be identified.
EGO的真正目标是多局部优化
高效全局优化是一种常用的多模态黑盒函数优化算法。其受欢迎的一个重要原因是其全球收敛的理论基础。然而,由于昂贵优化的预算非常小,渐近性质只起到很小的作用,并且算法有时在实验比较中表现不佳。因此,多年来提出了许多可供选择的变体。在这项工作中,我们通过实验证明,该算法在要识别多个最优的设置中具有其强度。
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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