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Population Sizing for the Redundant Trivial Voting Mapping

机译:冗余平凡投票映射的人口规模

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摘要

This paper investigates how the use of the trivial voting (TV) mapping influences the performance of genetic algorithms (GAs). The TV mapping is a redundant representation for binary phenotypes. A population sizing model is presented that quantitatively predicts the influence of the TV mapping and variants of this encoding on the performance of GAs. The results indicate that when using this encoding GA performance depends on the influence of the representation on the initial supply of building blocks. Therefore, GA performance remains unchanged if the TV mapping is uniformly redundant that means on average a phenotype is represented by the same number of genotypes. If the optimal solution is overrepresented, GA performance increases, whereas it decreases if the optimal solution is underrepresented. The results show that redundant representations like the TV mapping do not increase GA performance in general. Higher performance can only be achieved if there is specific knowledge about the structure of the optimal solution that can beneficially be used by the redundant representation.
机译:本文研究了普通投票(TV)映射的使用如何影响遗传算法(GA)的性能。 TV映射是二进制表型的冗余表示。提出了一个人口规模模型,该模型可以定量预测电视映射及其编码变体对GA性能的影响。结果表明,使用此编码时,GA性能取决于表示形式对构件初始供应的影响。因此,如果TV映射是统一冗余的,则GA性能将保持不变,这意味着平均而言,一个表型由相同数量的基因型表示。如果最优解决方案过多,则GA性能会提高,而最优解决方案却存在不足,则GA性能会下降。结果表明,像电视映射这样的冗余表示通常不会提高GA性能。只有在存在有关最佳解决方案结构的特定知识的情况下,才能实现更高的性能,而冗余解决方案可以有益地使用这些知识。

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