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首页> 外文期刊>Journal of the American statistical association >Penalized Estimating Functions and Variable Selection in Semiparametric Regression Models
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Penalized Estimating Functions and Variable Selection in Semiparametric Regression Models

机译:半参数回归模型中的惩罚估计函数和变量选择

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摘要

We propose a general strategy for variable selection in semiparametric regression models by penalizing appropriate estimating functions. Important applications include semiparametric linear regression with censored responses and semiparametric regression with missing predictors. Unlike the existing penalized maximum likelihood estimators, the proposed penalized estimating functions may not pertain to the derivatives of any objective functions and may be discrete in the regression coefficients. We establish a general asymptotic theory for penalized estimating functions and present suitable numerical algorithms to implement the proposed estimators. In addition, we develop a resampling technique to estimate the variances of the estimated regression coefficients when the asymptotic variances cannot be evaluated directly. Simulation studies demonstrate that the proposed methods perform well in variable selection and variance estimation. We illustrate our methods using data from the Paul Coverdell Stroke Registry.
机译:我们通过惩罚适当的估计函数,为半参数回归模型中的变量选择提出了一种通用策略。重要的应用包括带有审查响应的半参数线性回归和缺少预测变量的半参数回归。与现有的惩罚最大似然估计器不同,拟议的惩罚估计函数可能不属于任何目标函数的导数,并且在回归系数中可能是离散的。我们建立了惩罚估计函数的一般渐近理论,并提出了合适的数值算法来实现所提出的估计。此外,当渐近方差无法直接评估时,我们开发了一种重采样技术来估计估计的回归系数的方差。仿真研究表明,所提出的方法在变量选择和方差估计中表现良好。我们使用Paul Coverdell中风注册表中的数据来说明我们的方法。

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