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Over-Selection: An attempt to boost EDA under small population size

机译:过度选择:尝试在人口较少的情况下提高EDA

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Estimation of distribution algorithm (EDA) is a new class of evolutionary algorithms with a wide range of real-world applications. However, it has been well known that the performance of EDA is not satisfactory enough if its population size is small. But to simply increase its population size may result in slow convergence. To the best knowledge of the authors’, very few work has been done on improving the performance of EDA under small population size. This paper illustrates why EDA does not work well under small population size and proposes a novel approach termed as Over-Selection to boost EDA under small population size. Experimental results on several benchmark problems demonstrate that Over-Selection based EDA is often able to achieve a better solution without significantly increasing its time consumption when compared with the original version of EDA.
机译:分布算法(EDA)的估计是一种具有广泛的现实应用的新型进化算法。然而,众所周知,如果人口大小很小,EDA的性能并不足够令人满意。但要简单地增加人口规模可能会导致慢趋同。为了提高作者的最佳知识,已经在小于人口大小下提高了EDA的表现来实现很少的工作。本文说明了为什么EDA在小人口规模下不起作用,并提出一种新的方法,称为在小于人口大小下提高EDA。关于多个基准问题的实验结果表明,基于过度的EDA通常能够实现更好的解决方案,而不会显着增加与EDA原始版本相比的时间消耗。

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