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An approach to stopping criteria for multi-objective optimization evolutionary algorithms: The MGBM criterion

机译:多目标优化进化算法的停止准则方法:MGBM准则

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In this work we put forward a comprehensive study on the design of global stopping criteria for multi-objective optimization. We describe a novel stopping criterion, denominated MGBM criterion that combines the mutual domination rate (MDR) improvement indicator with a simplified Kalman filter that is used for evidence gathering process. The MDR indicator, which is introduced along, is a special purpose solution meant for the stopping task. It is capable of gauging the progress of the optimization with a low computational cost and therefore suitable for solving complex or many-objective problems. The viability of the proposal is established by comparing it with some other possible alternatives. It should be noted that, although the criteria discussed here are meant for MOPs and MOEAs, they could be easily adapted to other softcomputing or numerical methods by substituting the local improvement metric with a suitable one.
机译:在这项工作中,我们对用于多目标优化的全局停止准则的设计提出了全面的研究。我们描述了一种新颖的停止准则,称为MGBM准则,该准则结合了相互支配率(MDR)改进指标与用于证据收集过程的简化卡尔曼滤波器。随同引入的MDR指示器是一种专用于停止任务的解决方案。它能够以较低的计算成本来衡量优化的进度,因此适合解决复杂或多目标的问题。通过将提案与其他可能的选择进行比较,可以确定该提案的可行性。应该注意的是,尽管此处讨论的标准是针对MOP和MOEA的,但可以通过用合适的方法代替局部改进指标,将其轻松地应用于其他软计算或数值方法。

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