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Coevolutionary Operations for Large Scale Multi-objective Optimization

机译:大规模多目标优化的协同进化运算

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Multi-objective evolutionary algorithms (MOEAs) of the state of the art are created with the only purpose of dealing with the number of objective functions in a multi-objective optimization problem (MOP) and treat the decision variables of a MOP as a whole. However, when dealing with MOPs with a large number of decision variables (more than 100) their efficacy decreases as the number of decision variables of the MOP increases. On the other hand, problem decomposition, in terms of decision variables, has been found to be extremely efficient and effective for solving large scale optimization problems. Nevertheless, most of the currently available approaches for large scale optimization rely on models based on cooperative coevolution or linkage learning methods that use multiple subpopulations or preliminary analysis, respectively, which is computationally expensive (in terms of function evaluations) when used within MOEAs. In this work, we study the effect of what we call operational decomposition, which is a novel framework based on coevolutionary concepts to apply MOEAs’s crossover operator without adding any extra cost. We investigate the improvements that NSGA-III can achieve when combined with our proposed coevolutionary operators. This new scheme is capable of improving efficiency of a MOEA when dealing with large scale MOPs having from 200 up to 1200 decision variables.
机译:创建当前技术水平的多目标进化算法(MOEA)的唯一目的是处理多目标优化问题(MOP)中的目标函数数量,并将MOP的决策变量作为一个整体进行处理。但是,当处理具有大量决策变量(超过100个)的MOP时,其效率会随着MOP决策变量数量的增加而降低。另一方面,已经发现根据决策变量的问题分解对于解决大规模优化问题非常有效。尽管如此,目前大多数用于大规模优化的方法都依赖于基于合作协同进化或链接学习方法的模型,这些模型分别使用多个子种群或初步分析,而在MOEA中使用时,在计算上(在功能评估方面)非常昂贵。在这项工作中,我们研究了所谓的操作分解的效果,这是一个基于协同进化概念的新颖框架,可在不增加任何额外成本的情况下应用MOEA的交叉算子。我们研究了与我们提出的协同进化算子结合使用时NSGA-III可以实现的改进。当处理具有200至1200个决策变量的大规模MOP时,该新方案能够提高MOEA的效率。

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