趋同(经济学)
计算机科学
最优化问题
进化计算
进化算法
解决方案集
集合(抽象数据类型)
差异进化
多目标优化
人工智能
数学优化
元启发式
遗传算法
进化策略
帕累托原理
水准点(测量)
粒子群优化
多样性(政治)
数学
机器学习
经济
社会学
程序设计语言
经济增长
人类学
作者
Salem F. Adra,Peter J. Fleming
标识
DOI:10.1109/tevc.2010.2058117
摘要
In evolutionary multiobjective optimization, the task of the optimizer is to obtain an accurate and useful approximation of the true Pareto-optimal front. Proximity to the front and diversity of solutions within the approximation set are important requirements. Most established multiobjective evolutionary algorithms (MOEAs) have mechanisms that address these requirements. However, in many-objective optimization, where the number of objectives is greater than 2 or 3, it has been found that these two requirements can conflict with one another, introducing problems such as dominance resistance and speciation. In this paper, two diversity management mechanisms are introduced to investigate their impact on overall solution convergence. They are introduced separately, and in combination, and tested on a set of test functions with an increasing number of objectives (6-20). It is found that the inclusion of one of the mechanisms improves the performance of a well-established MOEA in many-objective optimization problems, in terms of both convergence and diversity. The relevance of this for many-objective MOEAs is discussed.
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