目标降维的Pareto角搜索进化算法及主成分分析

X. Nguyen, L. Bui, Cao Truong Tran
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引用次数: 2

摘要

多目标优化问题(MaOPs)给现有的多目标进化算法(moea)带来了严重的困难。缓解这些困难的一种常用方法是使用客观降维。大多数现有的目标约简方法都是耗时的,因为它们需要moea运行许多代。在[18]中提出了Pareto角搜索进化算法(Pareto corner search evolution algorithm, PCSEA),通过只寻找角解而不寻找全解来提高目标约简算法的速度。然而,[18]中基于pcsea的目标约简方法需要预先定义一个阈值来选择目标,该阈值对问题依赖性强,不易直接获得。本文提出了一种结合主成分分析(PCA)和主成分分析(PCSEA)的客观降维方法。该方法结合了PCSEA和PCA的优点,不仅可以有效地消除冗余目标,而且不需要预先定义任何参数。实验结果还表明,该方法比基于pcsea的目标约简方法更成功地实现了目标约简。这些结果进一步加强了进化计算和机器学习之间的联系,以解决优化问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Pareto Corner Search Evolutionary Algorithm and Principal Component Analysis for Objective Dimensionality Reduction
Many-objective optimisation problems (MaOPs) cause serious difficulties for existing multi-objective evolutionary algorithms (MOEAs). One common way to alleviate these difficulties is to use objective dimensionality reduction. Most existing objective reduction methods are time-consuming because they require MOEAs to run numerous generations. Pareto corner search evolutionary algorithm (PCSEA) was proposed in [18] to speed up objective reduction methods by only seeking corner solutions instead of whole solutions. However, the PCSEA-based objective reduction method in [18] needs to predefine a threshold to select objectives which strongly depends on problems and is not straightforward to obtain. This paper proposes a new objective dimensionality reduction method by integrating PCSEA and principal component analysis (PCA). Thanks to combining advantages of PCSEA and PCA, the proposed method not only can be efficient to eliminate redundant objectives, but also not require to define any parameter in advanced. The experimental results also show that the proposed method can perform objective reduction more successfully than the PCSEA-based objective reduction method. The results further strengthen the links between evolutionary computation and machine learning to address optimization problems.
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