噪声环境下的评估调度

James R. Glenn
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引用次数: 1

摘要

本文研究了遗传算法在噪声环境下的固定评估次数调度问题。对于固定数量的评估,需要在允许种群进化的时间(即代的数量)、种群的大小以及为减少噪声影响而为每个个体安排的样本数量之间进行权衡。本文主要关注在进化阶段分配评价与从最终种群中选择适应性最高个体(“冠军选择”阶段)分配评价之间的平衡。在冠军选择阶段,使用通用测试函数比较几种不同的调度评估算法,以查看它们找到最优值的频率。对最佳算法进行了改进,提高了算法的运行时间。我们找到了选择测试函数的进化和冠军选择阶段之间的最佳分割,我们检查了其他参数的变化的影响,如代数(因此是种群)和每个个体的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation scheduling in noisy environments
This paper investigates the problem of scheduling a fixed number of evaluations for genetic algorithms in noisy environments. With a fixed number of evaluations there is a tradeoff between the time the population is allowed to evolve (that is, the number of generations), the size of the population, and the number of samples scheduled per individual in an effort to reduce the effects of noise. This paper focuses mostly on the balance between allocating evaluations to the evolutionary phase versus allocating evaluations to selecting the individual with the highest fitness from the final population (the “champion selection” phase). Several different algorithms for scheduling evaluations during the champion selection phase are compared using a common test function to see how often they find the optimal value. The best algorithm is enhanced to improve its running time. We find the optimal split between the evolutionary and champion selection phases for the selected test function and we examine the effect of varying other parameters such as number of generations (and hence population) and evaluations per individual.
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