CMA-ES与重启解决CEC 2013基准问题

I. Loshchilov
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引用次数: 133

摘要

针对CEC 2013实参数优化专题会议设计的28个无噪声优化问题(包括23个多模态优化问题),研究了6种具有重启的协方差矩阵自适应进化策略(CMAES)的性能。重新启动策略的实验验证表明:1)经过加权主动协方差矩阵更新的CMA-ES版本优于原始CMA-ES版本,特别是在病态问题上;ii)初始突变步长不同的双种群重启策略通常优于种群大小增加的初始重启策略(IPOP);(3)最近提出的CMA-ES备选重启策略表现出较好的性能,在10维、30维和50维问题的全运行后功能-目标对的解决比例上排名第一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CMA-ES with restarts for solving CEC 2013 benchmark problems
This paper investigates the performance of 6 versions of Covariance Matrix Adaptation Evolution Strategy (CMAES) with restarts on a set of 28 noiseless optimization problems (including 23 multi-modal ones) designed for the special session on real-parameter optimization of CEC 2013. The experimental validation of the restart strategies shows that: i). the versions of CMA-ES with weighted active covariance matrix update outperform the original versions of CMA-ES, especially on ill-conditioned problems; ii). the original restart strategies with increasing population size (IPOP) are usually outperformed by the bi-population restart strategies where the initial mutation stepsize is also varied; iii). the recently proposed alternative restart strategies for CMA-ES demonstrate a competitive performance and are ranked first w.r.t. the proportion of function-target pairs solved after the full run on all 10-, 30- and 50-dimensional problems.
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