Efficient nonlinear correlation detection for decomposed search in evolutionary multi-objective optimization

Handing Wang, Yaochu Jin
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引用次数: 5

Abstract

The mapping relation between decision variables and objective functions is complicated in multi-objective optimization problems. Dimension reduction-based memetic optimization strategy was proposed to decompose a multi-objective optimization problem into several easier subproblems in decision subspaces by detecting the correlation between decision variables and objective functions. In this work, the process of optimizing the original problem by separately searching the decision space of the subproblems is termed decomposed search. We embed the decomposed search strategy in existing multi-objective evolutionary algorithms to improve their performance. However, it is highly time-consuming to detect the mapping relation and select solutions for decomposed search. To improve the computational efficiency of the strategy, we adopt nonlinear correlation information entropy to measure the correlation between the decision variables and objective functions and suggest a probabilistic similarity measurement to select solutions for the decomposed search, which is shown to be effective by experimental results. Finally, the correlation detection and solution selection strategies proposed in this paper are embedded in both Pareto- and non-Pareto-based multi-objective evolutionary algorithms to compare them with existing ones. Our experimental results demonstrate that the proposed strategies have significantly improved the computational efficiency at the expense of slightly degraded performance.
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进化多目标优化中分解搜索的高效非线性相关检测
在多目标优化问题中,决策变量与目标函数之间的映射关系比较复杂。提出了一种基于降维的模因优化策略,通过检测决策变量与目标函数之间的相关性,将多目标优化问题分解为决策子空间中几个更简单的子问题。在此工作中,通过对子问题的决策空间进行单独搜索来优化原问题的过程称为分解搜索。我们将分解搜索策略嵌入到现有的多目标进化算法中,以提高算法的性能。但是,分解搜索中映射关系的检测和解的选择非常耗时。为了提高策略的计算效率,我们采用非线性相关信息熵来度量决策变量与目标函数之间的相关性,并提出了一种概率相似性度量方法来选择分解搜索的解,实验结果表明该方法是有效的。最后,将本文提出的相关性检测和解选择策略嵌入到基于Pareto和非Pareto的多目标进化算法中,并与现有算法进行比较。我们的实验结果表明,所提出的策略在性能略有下降的情况下显著提高了计算效率。
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