Shimin Zheng, Uma Rao, Alfred A Bartolucci, Karan P Singh
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引用次数: 0
摘要
Bartolucci et al.(2003)将分布假设从正态(Lyles et al., 2000)扩展到椭圆轮廓分布(ECD),用于纵向数据分析的随机回归模型,考虑了不可检测值和信息缺失。本文建立了多元偏态ECD的随机回归模型。用一个真实的数据集说明,当对称分布假设被违反时,偏微分方程比高斯分布或更一般的连续对称分布能更好地拟合单峰连续数据。此外,本文还进行了仿真研究,以说明各种偏态ecd的模型适应度。我们使用的软件是SAS/STAT, V. 9.13。
Random Regression Models Based On The Skew Elliptically Contoured Distribution Assumptions With Applications To Longitudinal Data.
Bartolucci et al.(2003) extended the distribution assumption from the normal (Lyles et al., 2000) to the elliptical contoured distribution (ECD) for random regression models used in analysis of longitudinal data accounting for both undetectable values and informative drop-outs. In this paper, the random regression models are constructed on the multivariate skew ECD. A real data set is used to illustrate that the skew ECDs can fit some unimodal continuous data better than the Gaussian distributions or more general continuous symmetric distributions when the symmetric distribution assumption is violated. Also, a simulation study is done for illustrating the model fitness from a variety of skew ECDs. The software we used is SAS/STAT, V. 9.13.