一种基于分类和Pareto支配的多目标进化算法

Jinyuan Zhang, Aimin Zhou, Guixu Zhang
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引用次数: 58

摘要

在多目标进化算法中,大多数选择算子都是基于目标值或近似目标值。进化算法中的选择本质上是一个分类问题,即选择等于将被选择的解分类为一类,而将未被选择的解分类为另一类。在此基础上,提出了一种基于分类的多目标进化算法预选方法。这种方法维护两个外部种群:一个是包含一组“好”解决方案的正数据集,另一个是包含一组“坏”解决方案的负数据集。在每一代中,首先使用两个外部种群来训练分类器,然后使用分类器过滤新生成的候选解,仅保留标记为正的解作为后代解。本文将所提出的预选方法整合到基于Pareto支配的算法框架中。对不同分类器和不同复制算子的影响进行了系统的实证研究。实验结果表明,基于分类的预选可以提高基于Pareto支配的多目标进化算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A classification and Pareto domination based multiobjective evolutionary algorithm
In multiobjective evolutionary algorithms, most selection operators are based on the objective values or the approximated objective values. It is arguable that the selection in evolutionary algorithms is a classification problem in nature, i.e., selection equals to classifying the selected solutions into one class and the unselected ones into another class. Following this idea, we propose a classification based preselection for multiobjective evolutionary algorithms. This approach maintains two external populations: one is a positive data set which contains a set of `good' solutions, and the other is a negative data set contains a set of `bad' solutions. In each generation, the two external populations are used to train a classifier firstly, then the classifier is applied to filter the newly generated candidate solutions and only the ones labeled as positive are kept as the offspring solutions. The proposed preselection is integrated into the Pareto domination based algorithm framework in this paper. A systematic empirical study on the influence of different classifiers and different reproduction operators has been done. The experimental results indicate that the classification based preselection can improve the performance of Pareto domination based multiobjective evolutionary algorithms.
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