使用自回归和随机效应模型对重复二进制数据进行纵向分析

M. Aitkin, M. Alfò
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引用次数: 28

摘要

本文将二元重复响应的随机系数模型扩展到包含马尔可夫形式的序列依赖,目的是定义同一个体上记录的响应之间的一般关联结构。我们不采用随机系数分布的参数规范,这使我们能够克服由于该组件的错误规范而导致的不一致。通过非参数最大似然(NPML)的EM算法估计模型参数,该算法扩展到处理重复测量之间的序列相关性,并明确关注已观察到的短单个时间序列的情况。该方法是通过对著名的马斯卡廷(爱荷华州)儿童肥胖纵向研究的重新分析来描述的。
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Longitudinal analysis of repeated binary data using autoregressive and random effect modelling
In this paper we extend random coefficient models for binary repeated responses to include serial dependence of Markovian form, with the aim of defining a general association structure among responses recorded on the same individual. We do not adopt a parametric specification for the random coefficients distribution and this allows us to overcome inconsistencies due to misspecification of this component. Model parameters are estimated by means of an EM algorithm for nonparametric maximum likelihood (NPML), which is extended to deal with serial correlation among repeated measures, with an explicit focus on those situations where short individual time series have been observed. The approach is described by presenting a reanalysis of the well-known Muscatine (Iowa) longitudinal study on childhood obesity.
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