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A Comparison of Correlation Structure Selection Penalties for Generalized Estimating Equations

机译:广义估计方程相关结构选择罚分的比较

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摘要

Correlated data are commonly analyzed using models constructed using population-averaged generalized estimating equations (GEEs). The specification of a population-averaged GEE model includes selection of a structure describing the correlation of repeated measures. Accurate specification of this structure can improve efficiency, whereas the finite-sample estimation of nuisance correlation parameters can inflate the variances of regression parameter estimates. Therefore, correlation structure selection criteria should penalize, or account for, correlation parameter estimation. In this article, we compare recently proposed penalties in terms of their impacts on correlation structure selection and regression parameter estimation, and give practical considerations for data analysts. Supplementary materials for this article are available online.
机译:通常使用人口平均广义估计方程(GEE)构建的模型来分析相关数据。总体平均GEE模型的规范包括选择描述重复测量相关性的结构。正确指定此结构可以提高效率,而讨厌的相关参数的有限样本估计可以增大回归参数估计的方差。因此,相关结构选择标准应惩罚或考虑相关参数估计。在本文中,我们比较了最近提出的惩罚对相关结构选择和回归参数估计的影响,并为数据分析人员提供了实际考虑。可在线获得本文的补充材料。

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