AGAVaPS -可变种群大小的自适应遗传算法

Rafael R. M. Ribeiro, Carlos Dias Maciel
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引用次数: 0

摘要

近年来,人们对优化,尤其是元启发式算法产生了浓厚的兴趣。许多工作已经提出了这些算法的一般和特定应用的改进。本文提出了一种遗传算法的改进——变种群大小自适应遗传算法(AGAVaPS)。在agavap上,每个解决方案都有自己的突变率和解决方案在种群中的迭代次数。在CEC2017单目标优化基准函数上,考虑搜索空间的覆盖范围和获得的解的质量,对所提出的优化器与其他六个完善的优化器进行了测试。该方法还用于特征选择和贝叶斯网络结构学习。分析了种群规模在迭代过程中的演化规律。结果表明,AGAVaPS在解决方案的覆盖范围和质量方面都具有很强的竞争力。
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AGAVaPS - Adaptive Genetic Algorithm with Varying Population Size
Recently there is great interest in optimization, especially on meta-heuristic algorithms. Many works have proposed improvements for these algorithms for general and specific applications. In this paper the Adaptive Genetic Algorithm with Varying Population Size (AGAVaPS) is proposed, an improvement of Genetic Algorithm. On the AGAVaPS each solution has their own mutation rate and number of iterations that the solution will be in the population. The proposed optimizer is tested against six other well established optimizers on the CEC2017 single objective optimization benchmark functions considering coverage of the search space and quality of solution obtained. It is also tested for feature selection and Bayesian network structural learning. The evolution of the population size over the iterations is also analysed. The results obtained show that the AGAVaPS has a very competitive performance in both, coverage and quality of solution.
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