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首页> 外文期刊>Journal of statistical computation and simulation >Robust rank-based variable selection in double generalized linear models with diverging number of parameters under adaptive Lasso
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Robust rank-based variable selection in double generalized linear models with diverging number of parameters under adaptive Lasso

机译:基于级别的基于级别的Directized线性模型的可变选择,自适应套索下的参数发散

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摘要

We propose a robust rank-based estimation and variable selection in double generalized linear models when the number of parameters diverges with the sample size. The consistency of the variable selection procedure and asymptotic properties of the resulting estimators are established under appropriate selection of tuning parameters. Simulations are performed to assess the finite sample performance of the proposed estimation and variable selection procedure. In the presence of gross outliers, the proposed method is showing that the variable selection method works better. For practical application, a real data application is provided using nutritional epidemiology data, in which we explore the relationship between plasma beta-carotene levels and personal characteristics (e.g. age, gender, fat, etc.) as well as dietary factors (e.g. smoking status, intake of cholesterol, etc.).
机译:当参数的数量与样本大小发散时,我们提出了一种强大的基于级别的估计和变量选择。 The consistency of the variable selection procedure and asymptotic properties of the resulting estimators are established under appropriate selection of tuning parameters.进行仿真以评估所提出的估计和变量选择过程的有限样本性能。在总异常值存在下,所提出的方法表明可变选择方法更好地工作。对于实际应用,使用营养流行病学数据提供真实数据应用,其中我们探讨了血浆β-胡萝卜素水平和个人特征(例如年龄,性别,脂肪等)以及膳食因素之间的关系(例如吸烟状态摄入胆固醇等)。

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