A comparative study of dynamic resampling strategies for guided Evolutionary Multi-objective Optimization

Florian Siegmund, A. Ng, K. Deb
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引用次数: 22

Abstract

In Evolutionary Multi-objective Optimization many solutions have to be evaluated to provide the decision maker with a diverse choice of solutions along the Pareto-front, in particular for high-dimensional optimization problems. In Simulation-based Optimization the modeled systems are complex and require long simulation times. In addition the evaluated systems are often stochastic and reliable quality assessment of system configurations by resampling requires many simulation runs. As a countermeasure for the required high number of simulation runs caused by multiple optimization objectives the optimization can be focused on interesting parts of the Pareto-front, as it is done by the Reference point-guided NSGA-II algorithm (R-NSGA-II) [9]. The number of evaluations needed for the resampling of solutions can be reduced by intelligent resampling algorithms that allocate just as much sampling budget needed in different situations during the optimization run. In this paper we propose and compare resampling algorithms that support the R-NSGA-II algorithm on optimization problems with stochastic evaluation functions.
导向进化多目标优化的动态重采样策略比较研究
在进化多目标优化中,必须对许多解决方案进行评估,以便为决策者提供沿着帕累托前沿的多种解决方案选择,特别是对于高维优化问题。在基于仿真的优化中,建模系统复杂且需要较长的仿真时间。此外,被评估的系统通常是随机的,通过重采样对系统配置进行可靠的质量评估需要多次模拟运行。为了解决多个优化目标导致的高模拟运行次数的问题,可以将优化重点放在Pareto-front的有趣部分,这是由Reference point-guided NSGA-II算法(R-NSGA-II)完成的[9]。在优化运行过程中,智能重采样算法可以在不同情况下分配相同数量的采样预算,从而减少解决方案重采样所需的评估次数。本文针对随机评价函数优化问题,提出并比较了支持R-NSGA-II算法的重采样算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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