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Variable Selection in General Frailty Models Using Penalized H-Likelihood

机译:使用罚H似然的一般脆弱模型中的变量选择

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摘要

Variable selection methods using a penalized likelihood have been widely studied in various statistical models. However, in semiparametric frailty models, these methods have been relatively less studied because the marginal likelihood function involves analytically intractable integrals, particularly when modeling multicomponent or correlated frailties. In this article, we propose a simple but unified procedure via a penalized h-likelihood (HL) for variable selection of fixed effects in a general class of semiparametric frailty models, in which random effects may be shared, nested, or correlated. We consider three penalty functions (least absolute shrinkage and selection operator [LASSO], smoothly clipped absolute deviation [SCAD], and HL) in our variable selection procedure. We show that the proposed method can be easily implemented via a slight modification to existing HL estimation approaches. Simulation studies also show that the procedure using the SCAD or HL penalty performs well. The usefulness of the new method is illustrated using three practical datasets too. Supplementary materials for the article are available online.
机译:在各种统计模型中,已经广泛研究了使用惩罚可能性的变量选择方法。但是,在半参数脆弱模型中,这些方法的研究相对较少,因为边际似然函数涉及解析难解的积分,尤其是在对多分量或相关脆弱建模时。在本文中,我们提出了一种通过罚h似然(HL)进行简单但统一的程序,用于在一般类别的半参数脆弱模型中选择固定效应的变量,其中随机效应可以共享,嵌套或相关。我们在变量选择过程中考虑了三个惩罚函数(最小绝对收缩和选择算子[LASSO],平滑修剪的绝对偏差[SCAD]和HL)。我们表明,通过对现有的HL估计方法稍加修改,可以轻松实现所提出的方法。仿真研究还表明,使用SCAD或HL惩罚的过程效果很好。还使用三个实用的数据集说明了该新方法的有用性。该文章的补充材料可在线获得。

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