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CMA evolution strategy assisted by kriging model and approximate ranking

机译:CMA演变战略通过Kriging模型和近似排名协助

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The covariance matrix adaptation evolution strategy (CMA-ES) is a competitive evolutionary algorithm (EA) for difficult continuous optimization problems. However, expensive function evaluation of many real-world optimization problems poses a serious challenge to the application of CMA-ES (and other EAs) to these problems. To address this challenge, surrogate-assisted EAs has attracted increasing attention and become popular. In this paper, a new surrogate-assisted CMA-ES algorithm in which Kriging model is used to enhance CMA-ES via approximate ranking procedure is proposed. In the proposed algorithm, the approximate ranking procedure which estimates the rank of current population by using Kriging model and the exact fitness function together is adopted. In addition, the confidence interval method of training set selection is introduced for surrogate model construction. An initial sampling is performed before entering the evolution loop. In each iteration (generation), after the population sampling, the approximate ranking procedure is called instead of the original fitness evaluation, then, parameters of the sampling distribution are updated. This iterative search process continues until the target fitness is reached or the computational budget is exhausted. The proposed algorithm and confidence interval method of training set selection are analyzed through experimental study. The results demonstrate that the confidence interval method works well in Kriging-assisted CMA-ES, and that the proposed algorithm significantly reduces the number of function evaluations of CMA-ES and outperforms the Kriging-assisted CMA-ES using pre-selection and generation-based control on the tested problems.
机译:协方差矩阵适应演化策略(CMA-ES)是一种竞争进化算法(EA),用于难以连续的优化问题。然而,许多真实世界优化问题的昂贵功能评估对这些问题的CMA-ES(以及其他EA)构成了严峻的挑战。为了解决这一挑战,替代辅助EAS引起了越来越多的关注并变得流行。本文提出了一种新的替代辅助CMA-ES算法,其中提出了通过近似排名过程来增强CMA-ES的Kriging模型。在所提出的算法中,采用了使用Kriging模型估计当前群体等级的近似排名过程,以及确切的健身函数在一起。此外,介绍了训练集选择的置信区间方法,用于代理模型建设。在进入进化循环之前执行初始采样。在每次迭代(生成)中,在群体采样之后,调用近似排名过程而不是原始的健身评估,然后,更新采样分布的参数。此迭代搜索过程持续到达到目标健身或计算预算耗尽。通过实验研究分析了所提出的训练集选择的算法和置信区间方法。结果表明,置信区间方法在Kriging辅助CMA-ES中运用良好,并且该算法显着降低了CMA-ES的函数评估的数量,并且使用预选和生成优于Kriging辅助的CMA-ES - 基于测试问题的控制。

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