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Feature screening in ultrahigh-dimensional partially linear models with missing responses at random

机译:在超高压部分线性模型中筛选,随机缺失响应缺失

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摘要

This paper proposes a new feature screening procedure in ultrahigh-dimensional partially linear models with missing responses at random for longitudinal data based on the profile marginal kernel-assisted estimating equations imputation technique. The proposed feature screening procedure has three key merits. First, it is computationally efficient, and can be used to screen significant covariates in the presence of missing responses. Second, it does not require estimating respondent probability and is robust to the misspecification of respondent probability models. Third, the univariate kernel smoothing method is adopted to estimate nonparametric functions, and is employed to impute estimating equations with missing responses at random, which avoids the well-known "curse of dimensionality". The ranking consistency property and the sure screening property are shown under some regularity conditions. Simulation studies are conducted to investigate the finite sample performance of the proposed screening procedure. An example is used to illustrate the proposed procedure. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文提出了一种在超高尺寸部分线性模型中的新特征筛选过程,其基于轮廓边缘核心辅助估计方程归纳技术的纵向数据随机缺失响应。所提出的特征筛选程序具有三个关键优点。首先,它是计算上有效的,并且可用于在缺失的反应存在下筛选大量的协变量。其次,它不需要估计受访者的概率,并且对受访者概率模型的误操作是强大的。第三,采用单变量核平滑方法来估计非参数函数,并且用于施加随机缺失响应的估计方程,这避免了众所周知的“维度诅咒”。排名一致性属性和确保的筛选属性在某些规则条件下显示。进行仿真研究以研究所提出的筛选程序的有限样本性能。示例用于说明所提出的程序。 (c)2018 Elsevier B.v.保留所有权利。

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