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A Multi-armed Bandit Hyper-Heuristic

机译:多臂匪盗超启发式

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Hyper-heuristics are search methods that aim to solve optimization problems by selecting or generating heuristics. Selection hyper-heuristics choose from a pool of heuristics a good one to be applied at the current stage of the optimization process. The selection mechanism is the main part of a selection hyper-heuristic and have a great impact on its performance. In this paper a deterministic selection mechanism based on the concepts of the Multi-Armed Bandit (MAB) problem is proposed. The proposed approach is integrated into the HyFlex framework and is compared to twenty other hyper-heuristics using the methodology adapted by the CHeSC 2011 Challenge. The results obtained were good and comparable to those attained by the best hyper-heuristics. Therefore, it is possible to affirm that the use of a MAB mechanism as a selection method in a hyper-heuristic is a promising approach.
机译:超启发式搜索是旨在通过选择或生成启发式搜索来解决优化问题的搜索方法。选择超启发式算法从启发式算法池中选择一个在优化过程的当前阶段要应用的良好方法。选择机制是超启发式选择的主要部分,对它的性能有很大的影响。本文提出了一种基于多武装强盗(MAB)问题的确定性选择机制。拟议的方法已集成到HyFlex框架中,并使用CHeSC 2011挑战赛采用的方法与其他二十种超启发式方法进行了比较。所获得的结果很好,可以与最佳超启发式方法获得的结果相媲美。因此,可以肯定的是,在超启发式方法中将MAB机制用作选择方法是一种很有前途的方法。

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