基于指标的多目标进化算法的新发现

Jesús Guillermo Falcón-Cardona
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摘要

质量指标(QIs)是将一个实数赋值给一个集合的函数,该集合代表多目标优化问题的Pareto前逼近。在进化多目标优化领域,QIs主要用于两种方式:(1)用于多目标进化算法(moea)的性能评估,产生Pareto前逼近;(2)作为多目标进化算法选择机制的骨干。尽管QIs及其在moea中的应用不断取得进展,但目前在这一研究领域仍有大量悬而未决的问题。在这篇博士论文中,我们主要关注了两个研究方向:设计基于多个QIs竞争与合作的新的选择机制,旨在用其他QIs的优势来弥补单个QIs的弱点(在收敛性和多样性方面)。第二个研究轴是新的qi的生成,这些qi符合扩展到集合的Pareto优势关系。这样的QIs对moea性能得出的结论类型有直接影响。我们的实验结果表明,使用多个qi来设计新的选择机制或构建新的Pareto-compliant qi是一个有前途的研究方向,可以提高moea的能力,并允许对moea的性能评估具有更高的置信度。
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New Findings on Indicator-based Multi-Objective Evolutionary Algorithms: A Brief Summary
Quality indicators (QIs) are functions that assign a real value to a set that represents the Pareto front approximation of a multi-objective optimization problem. In the evolutionary multi-objective optimization community, QIs have been mainly employed in two ways: (1) for the performance assessment of multi-objective evolutionary algorithms (MOEAs), which produce Pareto front approximations, and (2) to be adopted as the backbone of selection mechanisms of MOEAs. Regardless of the continuing advances on QIs and their utilization in MOEAs, there are currently a vast number of open questions in this researcharea. In this doctoral thesis, we have focused on two main research directions: the design of new selection mechanisms based on the competition and cooperation of multiple QIs, aiming to compensate for the weaknesses (in terms of convergence and diversity properties) of individual QIs with the strengths of the others. The second research axis is the generation of new QIs that are compliant with the Pareto dominance relation extended to sets. Such QIs have a direct impact on the type of conclusions that can be drawn about the performance of MOEAs. Our experimental results have shown that the use of multiple QIs either to design new selection mechanisms or to construct new Pareto-compliant QIs is a promising research direction that can improve the capabilities of MOEAs and that allows for a performance assessment of MOEAs with a higher degree of confidence.
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