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Marginal and Random Intercepts Models for Longitudinal Binary Data With Examples From Criminology

机译:纵向二进制数据的边际和随机截距模型与犯罪学实例

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摘要

Two models for the analysis of longitudinal binary data are discussed: the marginal model and the random intercepts model. In contrast to the linear mixed model (LMM), the two models for binary data are not subsumed under a single hierarchical model. The marginal model provides group-level information whereas the random intercepts model provides individual-level information including information about heterogeneity of growth. It is shown how a type of numerical averaging can be used with the random intercepts model to obtain group-level information, thus approximating individual and marginal aspects of the LMM. The types of inferences associated with each model are illustrated with longitudinal criminal offending data based on N = 506 males followed over a 22-year period. Violent offending indexed by official records and self-report were analyzed, with the marginal model estimated using generalized estimating equations and the random intercepts model estimated using maximum likelihood. The results show that the numerical averaging based on the random intercepts can produce prediction curves almost identical to those obtained directly from the marginal model parameter estimates. The results provide a basis for contrasting the models and the estimation procedures and key features are discussed to aid in selecting a method for empirical analysis.
机译:讨论了用于分析纵向二进制数据的两个模型:边际模型和随机截距模型。与线性混合模型(LMM)相比,两个二进制数据模型不包含在单个层次模型下。边际模型提供群体水平的信息,而随机拦截模型提供个体水平的信息,包括有关增长异质性的信息。它显示了如何将数字平均类型与随机截距模型一起使用以获得组级别的信息,从而逼近LMM的各个方面。与每个模型相关的推论类型以纵向犯罪数据为例,该数据基于N = 506名男性在22年内的追踪情况。分析了由官方记录和自我报告索引的暴力违规行为,使用了广义估计方程估计了边际模型,并使用了最大似然估计了随机拦截模型。结果表明,基于随机截距的数值平均可以生成与直接从边际模型参数估计获得的预测曲线几乎相同的预测曲线。结果为对比模型提供了基础,并讨论了估算程序和关键特征,以帮助选择经验分析方法。

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