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Delete or merge regressors for linear model selection

机译:删除或合并回归变量以选择线性模型

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We consider a problem of linear model selection in the presence of both continuous and categorical predictors. Feasible models consist of subsets of numerical variables and partitions of levels of factors. A new algorithm called delete or merge regressors (DMR) is presented which is a stepwise backward procedure involving ranking the predictors according to squared t-statistics and choosing the final model minimizing BIC. We prove consistency of DMR when the number of predictors tends to infinity with the sample size and describe a simulation study using a pertaining R package. The results indicate significant advantage in time complexity and selection accuracy of our algorithm over Lasso-based methods described in the literature. Moreover, a version of DMR for generalized linear models is proposed.
机译:我们考虑同时存在连续和分类预测变量的线性模型选择问题。可行模型由数值变量的子集和因子水平的分区组成。提出了一种称为删除或合并回归器(DMR)的新算法,该算法是一种逐步向后的过程,涉及根据平方t统计量对预测变量进行排名,并选择最小化BIC的最终模型。当预测变量的数量趋于与样本大小成无穷大时,我们证明了DMR的一致性,并描述了使用相关R包进行的模拟研究。结果表明,与文献中描述的基于套索的方法相比,我们的算法在时间复杂度和选择准确性方面具有明显优势。此外,提出了一种用于广义线性模型的DMR版本。

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