首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >PROBABILISTIC ADAPTIVE CROSSOVER (PAX): A NOVEL GENETIC ALGORITHM CROSSOVER METHODOLOGY
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PROBABILISTIC ADAPTIVE CROSSOVER (PAX): A NOVEL GENETIC ALGORITHM CROSSOVER METHODOLOGY

机译:概率自适应分频器(PAX):新型遗传算法分频器方法

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摘要

A new crossover technique for genetic algorithms is proposed in this paper. The technique is called probabilistic adaptive crossover and denoted by PAX. The method includes the estimation of the probability distribution of the population, in order to store in a unique probability vector P information about the best and the worse solutions of the problem to be solved. The proposed methodology is compared with six crossover techniques namely: one-point crossover, two-point crossover, SANUX, discrete crossover, uniform crossover and selective crossover. These methodologies were simulated and compared over five test problems described by ONEMAX Function, Royal Road Function, Random L-MaxSAT, Bohachevsky Function, and the Himmelblau Function.
机译:提出了一种新的遗传算法交叉技术。该技术称为概率自适应交叉,并用PAX表示。该方法包括估计总体的概率分布,以便在唯一的概率向量P中存储有关要解决问题的最佳和最差解的信息。将所提出的方法与六种分频技术进行比较,即一点分频,两点分频,SANUX,离散分频,均匀分频和选择性分频。对这些方法进行了仿真,并比较了ONEMAX函数,Royal Road函数,随机L-MaxSAT,Bohachevsky函数和Himmelblau函数所描述的五个测试问题。

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