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Recentering, reanchoring restarting an evolutionary algorithm

机译:Remouting,Reanching&Restarting一种进化算法

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Recentering-restarting evolutionary algorithms have been used successfully to evolve epidemic networks. This study develops multiple variations of this algorithm for the purpose of evaluating its use for ordered-gene problems. These variations are called recentering or reanchoring-restarting evolutionary algorithms. Two different adaptive representations were explored that both use generating sets to produce local search operations. The degree of locality is controllable by setting program parameters. The variations and representations are applied to what may be considered the quintessential ordered gene problem, the Travelling Salesman Problem. Two sets of experimental analysis were performed. The first used large problem instances to determine how well this algorithm performs in comparison to benchmarks obtained from the DIMACS TSP implementation challenge. The second used many small problem instances to determine if any one of the recentering/reanchoring-restarting evolutionary algorithms outperforms the others. Variations of the recentering/reanchoring-restarting evolutionary algorithm were comparable to some of the best performing computational intelligence algorithms. In studying the small problem instances, no significant trend was found to suggest that one variation of baseline evolutionary algorithms or recentering/reanchoring-restarting evolutionary algorithms outperformed the others. This study shows that the new algorithms are very useful tools for improving results produced by other heuristics.
机译:Reposering-Restaring进化算法已成功使用以发展流行网络。本研究为评估其用于有序基因问题的目的,开发了这种算法的多种变化。这些变化被称为重新调整或重新开始的进化算法。探索了两种不同的自适应表示,两者都使用生成集来产生本地搜索操作。通过设置程序参数来控制局部程度。差异和表示应用于可能被认为是典型的有序基因问题,旅行推销员问题。进行两组实验分析。第一个使用的大问题实例来确定该算法与从Dimacs TSP实现挑战中获得的基准相比如何执行该算法。第二个使用了许多小问题实例来确定任何一个Reporting / Reanchoring重启的进化算法是否优于其他的进化算法。 Reposering / Reanchoring-Restarting进化算法的变化与一些最佳性能的计算智能算法相当。在研究小问题实例中,没有发现显着的趋势表明基线进化算法的一种变化或重新定位/重新开始的进化算法优于其他进化算法。本研究表明,新算法是改善其他启发式产生的结果的非常有用的工具。

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