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Quality gain analysis of the weighted recombination evolution strategy on general convex quadratic functions

机译:一般凸二次函数加权重组演化策略的质量增益分析

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Quality gain is the expected relative improvement of the function value in a single step of a search algorithm. Quality gain analysis reveals the dependencies of the quality gain on the parameters of a search algorithm, based on which one can derive the optimal values for the parameters. In this paper, we investigate evolution strategies with weighted recombination on general convex quadratic functions. We derive a bound for the quality gain and two limit expressions of the quality gain. From the limit expressions, we derive the optimal recombination weights and the optimal step-size, and find that the optimal recombination weights are independent of the Hessian of the objective function. Moreover, the dependencies of the optimal parameters on the dimension and the population size are revealed. Differently from previous works where the population size is implicitly assumed to be smaller than the dimension, our results cover the population size proportional to or greater than the dimension. Numerical simulation shows that the asymptotically optimal step-size well approximates the empirically optimal step-size for a finite dimensional convex quadratic function. (C) 2018 Elsevier B.V. All rights reserved.
机译:质量增益是在搜索算法的单个步骤中的函数值的预期改进。质量增益分析揭示了搜索算法参数上的质量增益的依赖关系,基于哪一个可以导出参数的最佳值。在本文中,我们研究了对一般凸二次函数的加权重组的演化策略。我们派生了质量收益的束缚和质量收益的两个限制表达。从极限表达式中,我们得出了最佳的重组权重和最佳阶梯大小,并发现最佳重组权重独立于目标函数的Hessian。此外,揭示了尺寸和群体大小上的最佳参数的依赖性。与以前的作品不同,人口大小被隐含地假设小于维度,我们的结果涵盖了与维度成比例或大的人口大小。数值模拟表明,渐近最佳的阶梯尺寸良好地近似于有限维凸二次函数的经验最佳阶梯大小。 (c)2018年elestvier b.v.保留所有权利。

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