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Multilevel models for longitudinal data

机译:纵向数据的多级模型

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摘要

Repeated measures and repeated events data have a hierarchical structure which can be analysed by using multilevel models. A growth curve model is an example of a multilevel random-coefficients model, whereas a discrete time event history model for recurrent events can be fitted as a multilevel logistic regression model. The paper describes extensions to the basic growth curve model to handle auto-correlated residuals, multiple-indicator latent variables and correlated growth processes, and event history models for correlated event processes. The multilevel approach to the analysis of repeated measures data is contrasted with structural equation modelling. The methods are illustrated in analyses of children's growth, changes in social and political attitudes, and the interrelationship between partnership transitions and childbearing.
机译:重复测量和重复事件数据具有层次结构,可以使用多级模型进行分析。增长曲线模型是多级随机系数模型的示例,而递归事件的离散时间事件历史模型可以拟合为多级逻辑回归模型。本文描述了基本增长曲线模型的扩展,以处理自相关残差,多指标潜在变量和相关增长过程,以及相关事件过程的事件历史模型。重复测量数据的多层次分析方法与结构方程建模形成对比。通过分析儿童的成长,社会和政治态度的变化以及伙伴关系过渡和生育之间的相互关系,对这些方法进行了说明。

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