CMA-ES公司
突变
数学
协方差矩阵
适应(眼睛)
路径(计算)
适应性突变
可分离空间
数学优化
基质(化学分析)
进化策略
分布(数学)
协方差
功能(生物学)
编码(内存)
人工智能
计算机科学
进化算法
算法
遗传算法
统计
数学分析
生物
复合材料
进化生物学
化学
生物化学
材料科学
程序设计语言
物理
光学
基因
作者
Nikolaus Hansen,Andreas Ostermeier
标识
DOI:10.1162/106365601750190398
摘要
This paper puts forward two useful methods for self-adaptation of the mutation distribution - the concepts of derandomization and cumulation. Principle shortcomings of the concept of mutative strategy parameter control and two levels of derandomization are reviewed. Basic demands on the self-adaptation of arbitrary (normal) mutation distributions are developed. Applying arbitrary, normal mutation distributions is equiv-alent to applying a general, linear problem encoding. The underlying objective of mutative strategy parameter control is roughly to favor previously selected mutation steps in the future. If this objective is pursued rigor-ously, a completely derandomized self-adaptation scheme results, which adapts arbitrary normal mutation distributions. This scheme, called covariance matrix adaptation (CMA), meets the previously stated demands. It can still be considerably improved by cumulation - utilizing an evolution path rather than single search steps. Simulations on various test functions reveal local and global search properties of the evolution strategy with and without covariance matrix adaptation. Their performances are comparable only on perfectly scaled functions. On badly scaled, non-separable functions usually a speed up factor of several orders of magnitude is ob-served. On moderately mis-scaled functions a speed up factor of three to ten can be expected.
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