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New Local Estimation Procedure for Nonparametric Regression Function of Longitudinal Data

机译:纵向数据非参数回归函数的新局部估计过程

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摘要

This paper develops a new estimation of nonparametric regression functions for clustered or longitudinal data. We propose to use Cholesky decomposition and profile least squares techniques to estimate the correlation structure and regression function simultaneously. We further prove that the proposed estimator is as asymptotically efficient as if the covariance matrix were known. A Monte Carlo simulation study is conducted to examine the finite sample performance of the proposed procedure, and to compare the proposed procedure with the existing ones. Based on our empirical studies, the newly proposed procedure works better than the naive local linear regression with working independence error structure and the efficiency gain can be achieved in moderate-sized samples. Our numerical comparison also shows that the newly proposed procedure outperforms some existing ones. A real data set application is also provided to illustrate the proposed estimation procedure.
机译:本文为聚类或纵向数据开发了一种新的非参数回归函数估计。我们建议使用Cholesky分解和轮廓最小二乘技术来同时估计相关结构和回归函数。我们进一步证明,所提出的估计器像已知协方差矩阵一样渐近有效。进行了蒙特卡洛模拟研究,以检验该程序的有限样本性能,并将该程序与现有程序进行比较。根据我们的经验研究,新提出的程序比具有工作独立误差结构的朴素局部线性回归更好,并且在中等大小的样本中可以实现效率增益。我们的数值比较还表明,新提出的过程优于某些现有过程。还提供了一个实际的数据集应用程序来说明所提出的估计程序。

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