鲁棒多目标优化中的概率优势

Faramarz Khosravi, M. Borst, J. Teich
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引用次数: 6

摘要

现实世界的问题通常需要同时优化多个通常相互冲突的标准,称为目标。此外,其中许多问题的适应度函数和决策变量存在很大范围的不确定性,使得优化任务更加复杂。确实存在一些健壮的优化技术来解决这类问题不同方面的不确定性。然而,在比较候选解决方案时,它们通常无法调查实际的不确定性分布。本文提出了一种新的基于直方图的方法,可以将候选解与任意分布的不确定目标进行比较。所提出的比较算子接收两个待比较候选解的每个目标的不确定性分布,并精确计算出一个目标大于另一个目标的概率。因此,它能够确定一种解决方案是否优于另一种。我们在现有的多目标优化算法中使用该比较算子,以允许找到具有不确定目标的问题的鲁棒解。我们还扩展了一个众所周知的具有各种不确定性的多目标基准套件,并将其与所提出的比较算子一起集成到包含多个多目标优化问题和算法的现有框架中。我们的实验表明,与最先进的比较算子相比,所提出的比较算子能够实现更好的优化质量和更高的鲁棒性。
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Probabilistic Dominance in Robust Multi-Objective Optimization
Real-world problems often require the simultaneous optimization of multiple, often conflicting, criteria called objectives. Additionally, many of these problems carry on top a wide range of uncertainties in their fitness functions and decision variables, rendering the optimization task even more complex. Several robust optimization techniques do exist to address uncertainty in different aspects of such problems. However, they typically fail to investigate the actual uncertainty distributions while comparing candidate solutions. This paper presents a novel histogram-based approach that enables to compare candidate solutions with arbitrarily distributed uncertain objectives. The proposed comparison operator receives the uncertainty distribution of each objective of two candidate solutions to be compared, and accurately calculates the probability that one objective is greater than the other. Thereby, it enables to determine whether one solution dominates the other. We employ this comparison operator in an existing multi-objective optimization algorithm to allow for finding robust solutions to problems with uncertain objectives. We also extend a well-known multi-objective benchmark suite with various uncertainties, and integrate it together with the proposed comparison operator into an existing framework that incorporates several multi-objective optimization problems and algorithms. Our experiments show that the proposed comparison operator enables achieving better optimization quality and higher robustness compared to the state-of-the-art.
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