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A copula-based Markov chain model for the analysis of binary longitudinal data

机译:基于copula的马尔可夫链模型用于二进制纵向数据分析

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摘要

A fully parametric first-order autoregressive (AR(1)) model is proposed to analyse binary longitudinal data. By using a discretized version of a copula, the modelling approach allows one to construct separate models for the marginal response and for the dependence between adjacent responses. In particular, the transition model that is focused on discretizes the Gaussian copula in such a way that the marginal is a Bernoulli distribution. A probit link is used to take into account concomitant information in the behaviour of the underlying marginal distribution. Fixed and time-varying covariates can be included in the model. The method is simple and is a natural extension of the AR(1) model for Gaussian series. Since the approach put forward is likelihood-based, it allows interpretations and inferences to be made that are not possible with semi-parametric approaches such as those based on generalized estimating equations. Data from a study designed to reduce the exposure of children to the sun are used to illustrate the methods.
机译:提出了一个全参数的一阶自回归(AR(1))模型来分析二进制纵向数据。通过使用系动词的离散化版本,建模方法允许人们为边际响应和相邻响应之间的依赖关系构建单独的模型。特别是,关注的过渡模型以边缘为伯努利分布的方式离散了高斯系。概率链接用于在基础边际分布的行为中考虑伴随信息。固定和时变协变量可以包含在模型中。该方法简单,是高斯级数AR(1)模型的自然扩展。由于提出的方法是基于似然性的,因此它可以进行半参数方法(例如基于广义估计方程的方法)无法进行的解释和推断。旨在减少儿童暴露在阳光下的一项研究数据用于说明这些方法。

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