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Hybridisation of Evolutionary Algorithms Through Hyper-heuristics for Global Continuous Optimisation

机译:全局连续优化的超启发式进化算法混合

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Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorithm Selection Problem was first posed. Here we propose a hyper-heuristic which can apply one of two meta-heuristics at the current stage of the search. A scoring function is used to select the most appropriate algorithm based on an estimate of the improvement that might be made by applying each algorithm. We use a differential evolution algorithm and a genetic algorithm as the two meta-heuristics and assess performance on a suite of 18 functions provided by the Generalization-based Contest in Global Optimization (genopt). The experimental evaluation shows that the hybridisation is able to provide an improvement with respect to the results obtained by both the differential evolution scheme and the genetic algorithm when they are executed independently. In addition, the high performance of our hybrid approach allowed two out of the three prizes available at GENOPT to be obtained.
机译:在首次提出算法选择问题40年之后,选择正确的算法来解决问题仍然是一个问题。在这里,我们提出了一种超启发式算法,可以在搜索的当前阶段应用两种元启发式算法之一。评分功能用于根据对通过应用每种算法可能实现的改进的估计来选择最合适的算法。我们使用差分进化算法和遗传算法作为两种元启发式方法,并评估了基于泛化的全局优化竞赛(genopt)提供的18个函数套件的性能。实验评估表明,当分别执行差分进化方案和遗传算法时,杂交能够改善结果。此外,我们的混合方法的高性能使GENOPT可获得三分之二的奖项。

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