在高分辨率近似的多目标进化算法中理解种群动力学

IF 0.8 Q4 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Hugo Monzón Maldonado, H. Aguirre, S. Vérel, A. Liefooghe, B. Derbel, Kiyoshi Tanaka
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引用次数: 1

摘要

多目标和多目标优化问题的目标是实现高分辨率近似,并与群体中的一些(如果不是所有的话)成员一起达到Pareto最优集,在现实世界的应用中更是如此,其中还希望从该集合中提取有关问题的知识。这项任务不仅需要达到帕累托最优集,还需要能够继续发现新的解决方案,即使人群中充满了这些解决方案。特别是在许多客观问题中,其中总体可能无法容纳完整的Pareto最优集。在这项工作中,我们的目标是研究一些工具,以了解算法一旦收敛时的行为,以及它们的种群规模和选择机制的特殊性如何帮助或阻碍它们不断寻找最优解的能力。通过在搜索过程中使用观察种群组成的特征,我们将研究算法的行为和动态,并提取一些见解。特征是根据优势状态、帕累托最优集的成员资格、发现的最近性和最优解的替换来定义的。作为对研究的补充,我们还通过发现的帕累托最优解的累积数量及其与一个常见度量超体积的关系来研究近似。为了生成用于分析的数据,所选择的问题是MNK景观,其设置使其易于收敛,对于具有3到6个目标的实例是可枚举的。所研究的算法选自具有代表性的多目标和多目标优化方法,如Pareto优势、Pareto优势松弛、基于指标和分解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding Population Dynamics in Multi- and Many-Objective Evolutionary Algorithms for High-Resolution Approximations
Achieving a high-resolution approximation and hitting the Pareto optimal set with some if not all members of the population is the goal for multi- and many-objective optimization problems, and more so in real-world applications where there is also the desire to extract knowledge about the problem from this set. The task requires not only to reach the Pareto optimal set but also to be able to continue discovering new solutions, even if the population is filled with them. Particularly in many-objective problems where the population may not be able to accommodate the full Pareto optimal set. In this work, our goal is to investigate some tools to understand the behavior of algorithms once they converge and how their population size and particularities of their selection mechanism aid or hinder their ability to keep finding optimal solutions. Through the use of features that look into the population composition during the search process, we will look into the algorithm’s behavior and dynamics and extract some insights. Features are defined in terms of dominance status, membership to the Pareto optimal set, recentness of discovery, and replacement of optimal solutions. Complementing the study with features, we also look at the approximation through the accumulated number of Pareto optimal solutions found and its relationship to a common metric, the hypervolume. To generate the data for analysis, the chosen problem is MNK-landscapes with settings that make it easy to converge, enumerable for instances with 3 to 6 objectives. Studied algorithms were selected from representative multi- and many-objective optimization approaches such as Pareto dominance, relaxation of Pareto dominance, indicator-based, and decomposition.
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来源期刊
Advances in Operations Research
Advances in Operations Research OPERATIONS RESEARCH & MANAGEMENT SCIENCE-
CiteScore
2.10
自引率
0.00%
发文量
12
审稿时长
19 weeks
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