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Shift-based density estimation for Pareto-based algorithms in many-objective optimization

机译:多目标优化中基于帕累托算法的基于位移的密度估计

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摘要

It is commonly accepted that Pareto-based evolutionary multiobjective optimization (EMO) algorithms encounter difficulties in dealing with many-objective problems. In these algorithms, the ineffectiveness of the Pareto dominance relation for a high-dimensional space leads diversity maintenance mechanisms to play the leading role during the evolutionary process, while the preference of diversity maintenance mechanisms for individuals in sparse regions results in the final solutions distributed widely over the objective space but distant from the desired Pareto front. Intuitively, there are two ways to address this problem: 1) modifying the Pareto dominance relation and 2) modifying the diversity maintenance mechanism in the algorithm. In this paper, we focus on the latter and propose a shift-based density estimation (SDE) strategy. The aim of our study is to develop a general modification of density estimation in order to make Pareto-based algorithms suitable for many-objective optimization. In contrast to traditional density estimation which only involves the distribution of individuals in the population, SDE covers both the distribution and convergence information of individuals. The application of SDE in three popular Pareto-based algorithms demonstrates its usefulness in handling many-objective problems. Moreover, an extensive comparison with five state-of-the-art EMO algorithms reveals its competitiveness in balancing convergence and diversity of solutions. These findings not only show that SDE is a good alternative to tackle many-objective problems, but also present a general extension of Pareto-based algorithms in many-objective optimization.
机译:公认的是,基于帕累托的演化多目标优化(EMO)算法在处理多目标问题时遇到困难。在这些算法中,高维空间的Pareto优势关系无效,导致多样性维持机制在进化过程中起主导作用,而稀疏区域中个体的多样性维持机制的偏好导致最终解决方案的广泛分布在目标空间上,但与所需的帕累托前沿距离较远。直观地讲,有两种方法可以解决此问题:1)修改帕累托优势关系,以及2)修改算法中的多样性维持机制。在本文中,我们将重点放在后者上,并提出基于位移的密度估计(SDE)策略。我们研究的目的是开发一种密度估计的通用修改方法,以使基于Pareto的算法适用于多目标优化。与仅涉及人口中个体分布的传统密度估计相反,SDE涵盖了个体的分布和收敛信息。 SDE在三种流行的基于Pareto的算法中的应用证明了其在处理多目标问题中的有用性。此外,与五种最新的EMO算法进行了广泛的比较,显示出它在平衡解决方案的收敛性和多样性方面的竞争力。这些发现不仅表明SDE是解决多目标问题的好选择,而且还提出了基于Pareto的算法在多目标优化中的一般扩展。

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