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Bivariate Copula-based Linear Mixed-effects Models: An Application to Longitudinal Child Growth Data

机译:基于双变量Copula的线性混合效应模型:在儿童纵向生长数据中的应用

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Multiple longitudinal outcomes are common in public health research and adequate methods are required when there is interest in the joint evolution of response variables over time. However, the main drawback of joint modeling procedures is the requirement to specify the joint density of all outcomes and their correlation structure, as well as numerical difficulties in statistical inference, when the dimension of these outcomes increases. To overcome such difficulty, we present two procedures to deal with multivariate longitudinal data. We first present an univariate approach, for which linear mixed-effects models are considered for each response variable separately. Then, a novel copula-based modeling is presented, in order to characterize relationships among the response variables. Both methodologies are applied to a real Brazilian data set on child growth.
机译:在公共卫生研究中,多个纵向结果是常见的,当对响应变量随时间的联合演变感兴趣时,需要采用适当的方法。但是,联合建模程序的主要缺点是,当这些结果的维数增加时,需要指定所有结果的联合密度及其相关结构,以及统计推断中的数值困难。为了克服这种困难,我们提出了两种处理多元纵向数据的程序。我们首先提出一种单变量方法,对于该方法,分别为每个响应变量考虑线性混合效应模型。然后,提出了一种新颖的基于copula的建模,以表征响应变量之间的关系。两种方法都应用于真实的巴西儿童成长数据集。

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