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Local polynomial estimation in partial linear regression models under dependence

机译:相依条件下部分线性回归模型的局部多项式估计

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摘要

A regression model whose regression function is the sum of a linear and a nonparametric component is presented. The design is random and the response and explanatory variables satisfy mixing conditions. A new local polynomial type estimator for the nonparametric component of the model is proposed and its asymptotic normality is obtained. Specifically, this estimator works on a prewhitening transformation of the dependent variable, and the results show that it is asymptotically more efficient than the conventional estimator (which works on the original dependent variable) when the errors of the model are autocorrelated. A simulation study and an application to a real data set give promising results.
机译:提出了一种回归模型,其回归函数为线性和非参数分量之和。设计是随机的,响应和解释变量满足混合条件。针对模型的非参数分量,提出了一种新的局部多项式估计,并获得了其渐近正态性。具体来说,该估计器对因变量进行了变白前转换,结果表明,当模型误差自动相关时,它比常规估计器(对原始因变量起作用)渐近有效。仿真研究和对真实数据集的应用给出了可喜的结果。

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