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Error covariance matrix correction based approach to functional coefficient regression models with generated covariates

机译:基于误差协方差矩阵校正的函数系数回归模型的生成协变量

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摘要

In this paper, we are concerned with the estimating problem of functional coefficient regression models with generated covariates. A new local polynomial estimation is proposed, which is based on error covariance matrix correction. It is shown that the resulting estimators are consistent, asymptotically normal and avoid the problem of undersmoothing. We estimate the error covariance matrix by difference based method. Therefore, the proposed new estimation avoids calibrating the covariate nonparametrically. Our difference based error covariance matrix estimator allows the order of difference to tend to be infinite and is asymptotically equivalent to the residual based estimator. In addition, we construct the simultaneous confidence bands for the underlying coefficient functions. The finite sample performance of our procedure is investigated in a simulation study and a real data set is analyzed to illustrate the usefulness of our procedure as well.
机译:在本文中,我们关注具有生成的协变量的功能系数回归模型的估计问题。提出了一种新的基于误差协方差矩阵校正的局部多项式估计。结果表明,得到的估计量是一致的,渐近正态的,避免了平滑不足的问题。我们通过基于差异的方法估计误差协方差矩阵。因此,提出的新估计避免了非参数地校准协变量。我们基于差异的误差协方差矩阵估计器允许差异的阶次趋于无限,并且渐近等效于基于残差的估计器。此外,我们为基础系数函数构造了同时置信带。我们在模拟研究中研究了该程序的有限样本性能,并分析了实际数据集以说明该程序的有用性。

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