The Distance - Based Selection Technique for Crossover in Genetic Algorithm

Nitima Lukkananuruk, Kata Praditwong, S. Hengpraprohm
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Abstract

The aim of this research is to study and develop the natural inspired parent selections for the crossover operator in genetic algorithms. There are three distance-based methods of mating selection: the hamming distance-based selection (HS), the cosine coefficient distance-based selection (CS), and the Pearson coefficient distance-based selection (PS). The experiment conducts the comparison of the distance-based selection methods with two traditional selections: the roulette wheel selection (RWS) and the tournament selection (TS). In the experiment, all selection methods are evaluated based on four binary testing problems: one-max, zero-max, random-max, and two trap problems. [1] The measurement criterion is the number of generations when the answer is found and the fitness values when the correct answer is not found. From the experimental results, the suitable approaches are divided into two groups according to the characteristics of the benchmark problems. For the trap problem with many local optima [2], the distance-based selection methods outperformed the traditional selection. However, for the other benchmark problems, the tournament selection is the better method than others.
遗传算法中基于距离的交叉选择技术
本研究的目的是研究和发展遗传算法中交叉算子的自然启发父代选择。基于距离的交配选择方法有三种:汉明距离选择(HS)、余弦系数距离选择(CS)和皮尔逊系数距离选择(PS)。实验将基于距离的选择方法与轮盘选择(RWS)和锦标赛选择(TS)两种传统选择方法进行了比较。在实验中,所有选择方法都基于四个二进制测试问题进行评估:1 -max, 0 -max, random-max和两个陷阱问题。[1]测量标准是找到答案时的代数和没有找到正确答案时的适应度值。从实验结果来看,根据基准问题的特点,将适合的方法分为两组。对于具有许多局部最优值的陷阱问题,基于距离的选择方法优于传统的选择方法。然而,对于其他基准问题,锦标赛选择比其他方法更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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