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An Overview of Weighted and Unconstrained Scalarizing Functions

机译:加权和无约束的标量函数概述

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Scalarizing functions play a crucial role in multi-objective evolutionary algorithms (MOEAs) based on decomposition and the R2 indicator, since they guide the population towards nearly optimal solutions, assigning a fitness value to an individual according to a predefined target direction in objective space. This paper presents a general review of weighted scalarizing functions without constraints, which have been proposed not only within evolutionary multi-objective optimization but also in the mathematical programming literature. We also investigate their scalability up to 10 objectives, using the test problems of Lame Superspheres on the MOEA/D and MOMBI-II frameworks. For this purpose, the best suited scalarizing functions and their model parameters are determined through the evolutionary calibrator EVOCA. Our experimental results reveal that some of these scalarizing functions are quite robust and suitable for handling many-objective optimization problems.
机译:标量函数在基于分解和R2指标的多目标进化算法(MOEA)中起着至关重要的作用,因为标量函数可以引导总体趋近最优解,并根据目标空间中预定义的目标方向为个体分配适合度值。本文介绍了不带约束的加权标量函数的一般性综述,这不仅是在进化多目标优化中提出的,而且在数学编程文献中也提出过。我们还使用Lame Superspheres在MOEA / D和MOMBI-II框架上的测试问题,研究了它们最多可达到10个目标的可扩展性。为此,通过演化校准器EVOCA确定最合适的标量函数及其模型参数。我们的实验结果表明,其中一些标量函数非常健壮,适合处理多目标优化问题。

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