基于代理的多目标粒子群优化

Luis V. Santana-Quintero, C. Coello, A. G. Hernández-Díaz, J. Velázquez-Reyes
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引用次数: 8

摘要

本文提出了一种新的算法,该算法使用一种称为支持向量机(SVM)的替代方法,使用监督学习来近似真实函数的评估。我们对多目标粒子群优化器(MOPSO)中不同的领导者选择方案进行了比较研究,以确定采用最合适的方法来解决我们感兴趣的一类问题。由此产生的混合呈现出解决方案的不良传播,这促使我们在算法中引入第二阶段,其中采用了一种称为粗糙集的方法,以改善解决方案沿帕累托前沿的传播。粗糙集被用作局部搜索引擎,它能够在先前基于代理的算法生成的非支配解的邻域内生成解。由此产生的方法能够产生相当好的Pareto前沿问题的近似,最多30个决策变量,只有2000个适应度函数评估。我们的结果与NSGA-II进行了比较,NSGA-II是该领域最先进的多目标进化算法的代表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surrogate-based Multi-Objective Particle Swarm Optimization
This paper presents a new algorithm that approximates real function evaluations using supervised learning with a surrogate method called support vector machine (SVM). We perform a comparative study among different leader selection schemes in a multi-objective particle swarm optimizer (MOPSO), in order to determine the most appropriate approach to be adopted for solving the sort of problems of our interest. The resulting hybrid presents a poor spread of solutions, which motivates the introduction of a second phase to our algorithm, in which an approach called rough sets is adopted in order to improve the spread of solutions along the Pareto front. Rough sets are used as a local search engine, which is able to generate solutions in the neighborhood of the nondominated solutions previously generated by the surrogate-based algorithm. The resulting approach is able to generate reasonably good approximations of the Pareto front of problems of up to 30 decision variables with only 2,000 fitness function evaluations. Our results are compared with respect to the NSGA-II, which is a multi-objective evolutionary algorithm representative of the state-of-the-art in the area.
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