首页> 外文会议>EvoWorkshops 2006: EvoBIO, EvoCOMNET, EvoHOT, EvoIASP, EvoINTERACTION, EvoMUSART, and EvoSTOC; 20060410-12; Budapest(HU) >A Preliminary Study on Handling Uncertainty in Indicator-Based Multiobjective Optimization
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A Preliminary Study on Handling Uncertainty in Indicator-Based Multiobjective Optimization

机译:基于指标的多目标优化中处理不确定性的初步研究

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摘要

Real-world optimization problems are often subject to uncertainties, which can arise regarding stochastic model parameters, objective functions and decision variables. These uncertainties can take different forms in terms of distribution, bound and central tendency. In the multiobjective context, several studies have been proposed to take uncertainty into account, and most of them propose an extension of Pareto dominance to the stochastic case. In this paper, we pursue a slightly different approach where the optimization goal is defined in terms of a quality indicator, i.e., an objective function on the set of Pareto set approximations. We consider the scenario that each solution is inherently associated with a probability distribution over the objective space, without assuming a 'true' objective vector per solution. We propose different algorithms which optimize the quality indicator, and preliminary simulation results indicate advantages over existing methods such as averaging, especially with many objective functions.
机译:现实世界中的优化问题通常会受到不确定性的影响,这些不确定性可能与随机模型参数,目标函数和决策变量有关。这些不确定性在分布,约束和集中趋势方面可以采取不同的形式。在多目标的情况下,已经提出了一些研究来考虑不确定性,并且大多数研究提出将帕累托优势扩展到随机情况。在本文中,我们追求一种略有不同的方法,其中根据质量指标定义优化目标,即基于Pareto集近似值的目标函数。我们考虑这样一种情况,即每个解决方案都固有地与目标空间上的概率分布相关联,而不假定每个解决方案都具有“真实的”目标向量。我们提出了不同的算法来优化质量指标,并且初步的仿真结果表明了优于诸如平均等现有方法的优势,尤其是在具有许多目标函数的情况下。

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