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Set-based Multi-Objective Optimization, Indicators, and Deteriorative Cycles

机译:基于集合的多目标优化,指标和恶化周期

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Evolutionary multi-objective optimization deals with the task of computing a minimal set of search points according to a given set of objective functions. The task has been made explicit in a recent paper by Zitzler et al. [13]. We take an order-theoretic view on this task and examine how the use of indicator functions can help to direct the search towards Pareto optimal sets. Thereby, we point out that evolutionary algorithms for multi-objective optimization working on the dominance relation of search points have to deal with a cyclic behavior that may lead to worsenings with respect to the Pareto-dominance relation defined on sets. Later on, we point out in which situations well-known binary and unary indicators can help to avoid this cyclic behavior.
机译:进化多目标优化处理根据给定的目标函数集计算最小搜索点集的任务。 Zitzler等人在最近的一篇论文中已明确指出了这一任务。 [13]。我们从顺序理论的角度对此任务进行研究,并研究指标函数的使用如何帮助将搜索引导至帕累托最优集。因此,我们指出,用于搜索点优势关系的用于多目标优化的进化算法必须处理一种循环行为,这种循环行为可能导致集合上定义的Pareto优势关系恶化。稍后,我们指出在哪些情况下众所周知的二元和一元指标可以帮助避免这种循环行为。

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