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Adaptive genetic algorithm for reliable training population in plant breeding genomic selection

机译:用于植物育种基因组选择的可靠训练种群的自适应遗传算法

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Many algorithms are developed to model Genomic Estimated Breeding Value (GEBV). Modeling GEBV evolves a huge size of genotype in both terms of the dimension (columns) and the instances (rows). Good combinations of features help in predicting which phenotype is being represented. Preparing a good training population sample is assumed to be a convenient solution to deal with such complex genotype data. In this research, an Adaptive Genetic Algorithm (AGA) is proposed. The adaptive characteristic of AGA by adjusting probabilities in crossover and mutation is expected to converge into the global optimum without getting trapped in local optima. The proposed method using AGA to optimize the feature selection and shrinkage mechanism is looked forward to provide a reliable model to be reused in other similar datasets.
机译:开发了许多算法来对基因组估计育种值(GEBV)进行建模。在尺寸(列)和实例(行)方面,建模GEBV会进化出巨大的基因型。功能的良好组合有助于预测所代表的表型。假设准备好的训练样本是解决此类复杂基因型数据的便捷方法。在这项研究中,提出了一种自适应遗传算法(AGA)。通过调整交叉和突变的概率,AGA的自适应特性有望收敛到全局最优,而不会陷入局部最优。期望所提出的使用AGA来优化特征选择和缩小机制的方法,以提供一种可在其他类似数据集中重用的可靠模型。

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