实数编码遗传算法中的重组算子

S. Picek, D. Jakobović, M. Golub
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引用次数: 35

摘要

交叉算子是实编码遗传算法中最重要的算子。然而,为特定问题选择最佳算子可能是一项艰巨的任务。本文在一组24个基准函数上比较了16个交叉算子。为了找到性能最好的操作符,进行了详细的统计分析。结果表明,不同交叉算子的效率存在显著差异,效率的高低也可能取决于适应度函数的不同性质。此外,研究结果还表明,交叉算子的组合效果最好。
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On the recombination operator in the real-coded genetic algorithms
Crossover is the most important operator in real-coded genetic algorithms. However, the choice of the best operator for a specific problem can be a difficult task. In this paper we compare 16 crossover operators on a set of 24 benchmark functions. A detailed statistical analysis is performed in an effort to find the best performing operators. The results show that there are significant differences in efficiency of different crossover operators, and that the efficiency may also depend on the distinctive properties of the fitness function. Additionally, the results point out that the combination of crossover operators yields the best results.
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