Greenwood G W, Zhu Q J
Department of Electrical and Computer Engineering, Portland State University, Portland, OR 97207, USA.
Evol Comput. 2001 Summer;9(2):147-57. doi: 10.1162/106365601750190389.
Evolutionary programs are capable of finding good solutions to difficult optimization problems. Previous analysis of their convergence properties has normally assumed the strategy parameters are kept constant, although in practice these parameters are dynamically altered. In this paper, we propose a modified version of the 1/5-success rule for self-adaptation in evolution strategies (ES). Formal proofs of the long-term behavior produced by our self-adaptation method are included. Both elitist and non-elitist ES variants are analyzed. Preliminary tests indicate an ES with our modified self-adaptation method compares favorably to both a non-adapted ES and a 1/5-success rule adapted ES.
进化程序能够为困难的优化问题找到良好的解决方案。以往对其收敛特性的分析通常假定策略参数保持不变,尽管在实际中这些参数是动态变化的。在本文中,我们提出了一种进化策略(ES)中用于自适应的1/5成功规则的修改版本。文中包含了由我们的自适应方法产生的长期行为的形式化证明。对精英型和非精英型ES变体都进行了分析。初步测试表明,采用我们修改后的自适应方法的ES与未采用自适应的ES以及采用1/5成功规则自适应的ES相比具有优势。