A decomposition based multiobjective evolutionary algorithm with semi-supervised classification

Xiaoji Chen, C. Shi, Aimin Zhou, Bin Wu, Zixing Cai
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引用次数: 5

Abstract

In multiobjective evolutionary algorithms, how to select the optimal solutions from the offspring candidate set significantly affects the optimization process. Usually, the selection process is largely based on the real objective values or surrogate model estimating objective values. However, these selection processes are very time consuming sometimes, especially for some real optimization problems. Recently, some researches began to employ supervised classification to assist offspring selection, but these works are difficult to prepare the exact positive and negative samples or time consuming of parameter tuning problems. In order to solve these disadvantages, we propose a decomposition based multiobjective evolutionary algorithm with semi-supervised classification. This approach using random sampling and non-dominated sorting to construct semi supervised classifier. In each generation, a set of candidate solutions are generated for each subproblem and only good solutions are reserved by classifier. If there is more than one good solutions, we calculate each of good solutions by real objective function and choose the best one as the offspring solution. Based on the typical decomposition based multiobjective evolutionary algorithm MOEA/D, we design algorithm framework through integrating the novel offspring selection process based on semi-supervised classification. Experiments show that the proposed algorithm performs best in most test cases and improves the performance of MOEA/D.
基于分解的半监督分类多目标进化算法
在多目标进化算法中,如何从后代候选集中选择最优解对优化过程有重要影响。通常,选择过程在很大程度上是基于真实的目标值或替代模型估计的目标值。然而,这些选择过程有时非常耗时,特别是对于一些实际的优化问题。近年来,一些研究开始使用监督分类辅助子代选择,但这些工作难以制备准确的正负样本或参数调整问题耗时。为了解决这些缺点,提出了一种基于分解的半监督分类多目标进化算法。该方法采用随机抽样和非支配排序来构造半监督分类器。在每一代中,对每个子问题生成一组候选解,分类器只保留好的解。如果有一个以上的优解,我们用实目标函数计算每个优解,并选择最优的一个作为子解。在典型的基于分解的多目标进化算法MOEA/D的基础上,结合基于半监督分类的新型子代选择过程,设计了算法框架。实验表明,该算法在大多数测试用例中表现最佳,提高了MOEA/D的性能。
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