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Impact of unknown covariance structures in semiparametric models for longitudinal data: An application to Wisconsin diabetes data

机译:纵向数据半参数模型中未知协方差结构的影响:在威斯康星州糖尿病数据中的应用

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Semiparametric models are becoming increasingly attractive for longitudinal data analysis. often there is lack of knowledge of the covariance structure of the response variable. Although it is still possible to obtain consistent estimators for both parametric and nonparametric components of a semipatrametric model by assuming an identity structure for the covariance matrix, the resulting estimators may not be efficient. We conducted extensive simulation studies to investigate the impact of an unknown covariance structure on estimators in semiparametric models for longitudinal data. In some situations the loss of efficiency could be substantial. A two-step estimator is thus proposed to improve the efficiency. Our study was motivated by a population based data analysis to examine the temporal relationship between systolic blood pressure and urinary albumin excretion.
机译:半参数模型对于纵向数据分析变得越来越有吸引力。通常缺乏对响应变量的协方差结构的了解。尽管仍然可以通过假设协方差矩阵的同一性结构来获得半参数模型的参数和非参数分量的一致估计量,但所得估计量可能无效。我们进行了广泛的模拟研究,以研究未知协方差结构对纵向数据半参数模型中估计量的影响。在某些情况下,效率损失可能很大。因此,提出了一种两步估计器以提高效率。我们的研究是基于人群的数据分析,目的是检查收缩压与尿白蛋白排泄之间的时间关系。

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