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An Adaptive GA in Partitioned Search Space

机译:分区搜索空间中的自适应遗传算法

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Evolutionary algorithms are population based meta-heuristics inspired from natural survival of fittest phenomena.Despite their reasonable performance, these algorithms suffer from some weaknesses including the need for finding the values of their parameters that affect their performance.A new algorithm is proposed that divide the search space into equal sized partitions.Each partition is assigned with two parameters that determine the intensification and diversification rates.The partitions will be intensified or diversified adaptively with regards to the corresponding parameters.Traditional crossover and mutation operators are replaced with two new parameter-free operators.The experiments conducted on a wide range of multi-modal and epistatic problems showed the superiority of the proposed method in comparison to other algorithms in literature.
机译:进化算法是基于适度现象自然生存的基于人口的元启发式算法,尽管它们具有合理的性能,但它们仍存在一些弱点,包括需要找到影响其性能的参数值。将空间搜索到相等大小的分区中,每个分区分配有两个参数来确定集约化和多样化的速率,将根据相应的参数自适应地强化或多样化分区,将传统的交叉和变异算子替换为两个新的无参数在广泛的多峰和上位问题上进行的实验表明,与文献中的其他算法相比,该方法具有优越性。

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