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Variable selection in statistical models using population-based incremental learning with applications to genome-wide association studies

机译:统计模型中的变量选择,使用基于群体的增量学习及其在全基因组关联研究中的应用

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Variable selection is the problem of choosing the subset of explanatory variables for a regression or classification model such that the resulting model is best according to some criterion. Here we consider the use of population-based incremental learning (PBIL) to select the variables for a linear regression model to predict a quantitative trait in living organisms. The data here is simulated to represent a genome-wide association study (GWAS) using single nucleotide polymorphisms (SNPs) as explanatory variables and height as an example trait. PBIL was effective in optimizing a variety of model fitness criteria. The resulting models were found to have true positive and false negative rates comparable to those of competing methods.
机译:变量选择是为回归模型或分类模型选择解释变量的子集的问题,以使根据某些准则得出的模型最好。在这里,我们考虑使用基于种群的增量学习(PBIL)为线性回归模型选择变量,以预测生物体的定量特征。使用单核苷酸多态性(SNP)作为解释变量,以身高作为示例性状,对此处的数据进行了模拟,以代表全基因组关联研究(GWAS)。 PBIL有效地优化了各种模型适用性标准。发现所得模型具有与竞争方法相当的真实阳性和阴性阴性率。

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