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Finding Robust Solutions Using Local Search

机译:使用本地搜索找到可靠的解决方案

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This paper investigates how a local search metaheuristic for continuous optimisation can be adapted so that it finds broad peaks, corresponding to robust solutions. This is relevant in problems in which uncertain or noisy data is present. When using a genetic or evolutionary algorithm, it is standard practice to perturb solutions once before evaluating them, using noise from a given distribution. This approach however, is not valid when using population-less techniques like local search and other heuristics that use local search. For those algorithms to find robust solutions, each solution needs to be perturbed and evaluated several times, and these evaluations need to be combined into a measure of robustness. In this paper, we examine how many of these evaluations are needed to reliably find a robust solution. We also examine the effect of the parameters of the noise distribution. Using a simple tabu search procedure, the proposed approach is tested on several functions found in the literature.
机译:本文研究了如何调整用于连续优化的局部搜索元启发式算法,以便找到对应于健壮解的宽峰。这与存在不确定或嘈杂数据的问题有关。当使用遗传算法或进化算法时,通常的做法是在使用给定分布的噪声对解决方案进行评估之前先对其进行一次干扰。但是,这种方法在使用诸如本地搜索和其他使用本地搜索的启发式方法的无人口技术时无效。为了使这些算法能够找到鲁棒的解决方案,每个解决方案都需要进行多次扰动和评估,并且需要将这些评估结果组合成一种鲁棒性度量。在本文中,我们检查了需要多少次评估才能可靠地找到可靠的解决方案。我们还将检查噪声分布参数的影响。使用简单的禁忌搜索程序,对文献中发现的几种功能进行了测试。

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