A Dynamic Partial Update for Covariance Matrix Adaptation

Hiroki Shimizu, Masashi Toyoda
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Abstract

Tackling large-scale and ill-conditioned problems is demanding even for the covariance matrix adaptation evolution strategy (CMA-ES), which is a state-of-the-art algorithm for black-box optimization. The coordinate selection is a technique that mitigates the ill-conditionality of large-scale problems by updating parameters in partially selected coordinate spaces. This technique can be applied to various CMA-ES variants and improves their performance especially for ill-conditioned problems. However, it often fails to improve the performance of well-conditioned problems, because it is difficult to choose appropriate coordinate spaces according to the ill-conditionality of problems. We introduce a dynamic partial update method for coordinate selection to solve the above problem. We use the second-order partial derivatives of an objective function to estimate the condition number and select coordinates so that the condition number of each pair does not exceed the given allowable value. In this method, the number of clusters becomes to be small for well-conditioned problems and large for ill-conditioned cases. In particular, the selection does not execute if the condition number of the full space is less than the allowable value. We observe significant improvements in well-conditioned problems and comparable performances in ill-conditioned cases in numerical experiments.
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协方差矩阵自适应的动态局部更新
协方差矩阵自适应进化策略(CMA-ES)是目前最先进的黑盒优化算法,对大规模病态问题的求解提出了更高的要求。坐标选择是一种通过在部分选定的坐标空间中更新参数来缓解大规模问题的病态性的技术。该技术可以应用于各种CMA-ES变体,并提高了它们的性能,特别是对于病态问题。然而,它往往不能提高条件良好问题的性能,因为很难根据问题的病态性选择合适的坐标空间。为了解决上述问题,我们引入了一种动态局部更新的坐标选择方法。我们利用目标函数的二阶偏导数来估计条件数并选择坐标,使每对条件数不超过给定的允许值。在这种方法中,对于条件良好的问题,聚类的数量变得很小,而对于条件不良的问题,聚类的数量变得很大。特别是,如果完整空间的条件号小于允许值,则不会执行选择。在数值实验中,我们观察到良好条件问题的显著改善和病态情况的可比性能。
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