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Statistical estimation in partial linear models with covariate data missing at random

机译:具有随机变量的协变量数据的部分线性模型的统计估计

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In this paper, we consider the partial linear model with the covariables missing at random. A model calibration approach and a weighting approach are developed to define the estimators of the parametric and nonparametric parts in the partial linear model, respectively. It is shown that the estimators for the parametric part are asymptotically normal and the estimators of g(·) converge to g(·) with an optimal convergent rate. Also, a comparison between the proposed estimators and the complete case estimator is made. A simulation study is conducted to compare the finite sample behaviors of these estimators based on bias and standard error. Keywords Model calibration - Weighted estimator - Asymptotic normality
机译:在本文中,我们考虑了部分线性模型,其中协变量随机丢失。开发了模型校准方法和加权方法来分别定义部分线性模型中参数部分和非参数部分的估计量。结果表明,参数部分的估计量是渐近正态的,并且g(·)的估计量以最佳收敛速率收敛到g(·)。此外,在建议的估计量和完整的案例估计量之间进行了比较。进行了仿真研究,以基于偏差和标准误差比较这些估计量的有限样本行为。关键词模型校准加权估计渐近正态性

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