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Polygene-based evolutionary algorithms with frequent pattern mining

机译:频繁模式挖掘的基于多基因的进化算法

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摘要

In this paper, we introduce polygene-based evolution, a novel framework for evolutionary algorithms (EAs) that features distinctive operations in the evolutionary process. In traditional EAs, the primitive evolution unit is a gene, wherein genes are independent components during evolution. In polygene-based evolutionary algorithms (PGEAs), the evolution unit is a polygene, i.e., a set of co-regulated genes. Discovering and maintaining quality polygenes can play an effective role in evolving quality individuals. Polygenes generalize genes, and PGEAs generalize EAs. Implementing the PGEA framework involves three phases: (I) polygene discovery, (II) polygene planting, and (III) polygene-compatible evolution. For Phase I, we adopt an associative classification-based approach to discover quality polygenes. For Phase II, we perform probabilistic planting to maintain the diversity of individuals. For Phase III, we incorporate polygene-compatible crossover and mutation in producing the next generation of individuals. Extensive experiments on function optimization benchmarks in comparison with the conventional and state-of-the-art EAs demonstrate the potential of the approach in terms of accuracy and efficiency improvement.
机译:在本文中,我们介绍了基于多基因的进化,这是一种新型的进化算法(EA)框架,其特征在于进化过程中的独特操作。在传统的EA中,原始进化单位是一个基因,其中基因是进化过程中的独立成分。在基于多基因的进化算法(PGEA)中,进化单元是一个多基因,即一组共同调控的基因。发现和维持优质的多基因可以在不断发展的优质个体中发挥有效作用。多基因概括基因,PGEA概括EA。 PGEA框架的实施涉及三个阶段:(I)多基因发现,(II)多基因种植和(III)多基因兼容进化。对于第一阶段,我们采用基于关联分类的方法来发现优质多基因。在第二阶段,我们进行概率种植以维持个体的多样性。对于第三阶段,我们在产生下一代个体中纳入了多基因兼容的交叉和突变。与常规EA和最新EA相比,针对功能优化基准进行的大量实验证明了该方法在准确性和效率改进方面的潜力。

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