Self-adaptation and global convergence: a counter-example

G. Rudolph
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引用次数: 23

Abstract

The self-adaptation of the mutation distribution is a distinguishing feature of evolutionary algorithms that optimize over continuous variables. It is widely recognized that self-adaptation accelerates the search for optima and enhances the ability to locate optima accurately, but it is generally unclear whether these optima are global ones or not. Here, it is proven that the probability of convergence to the global optimum is less than one in general, even if the objective function is continuous.
自我适应与全球趋同:一个反例
突变分布的自适应是对连续变量进行优化的进化算法的一个显著特征。人们普遍认为,自适应加速了对最优点的搜索,提高了精确定位最优点的能力,但这些最优点是否为全局最优点,通常并不清楚。在这里,证明了即使目标函数是连续的,一般情况下收敛到全局最优的概率小于1。
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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