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Combining group-based trajectory modeling and propensity score matching for causal inferences in nonexperimental longitudinal data

机译:将基于组的轨迹建模与倾向得分匹配相结合以用于非实验纵向数据中的因果推断

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摘要

A central theme of research on human development and psychopathology is whether a therapeutic intervention or a turning-point event, such as a family break-up, alters the trajectory of the behavior under study. This article describes and applies a method for using observational longitudinal data to make more transparent causal inferences about the impact of such events on developmental trajectories. The method combines 2 distinct lines of research: work on the use of finite mixture modeling to analyze developmental trajectories and work on propensity score matching. The propensity scores are used to balance observed covariates and the trajectory groups are used to control pretreatment measures of response. The trajectory groups also aid in characterizing classes of subjects for which no good matches are available. The approach is demonstrated with an analysis of the impact of gang membership on violent delinquency based on data from a large longitudinal study conducted in Montreal, Canada.
机译:人类发展和精神病理学研究的中心主题是治疗干预或转折点事件(例如家庭破裂)是否改变了所研究行为的轨迹。本文介绍并应用了一种方法,该方法用于使用观测纵向数据对此类事件对发展轨迹的影响做出更透明的因果推断。该方法结合了两条不同的研究方向:使用有限混合模型来分析发展轨迹,以及进行倾向得分匹配。倾向得分用于平衡观察到的协变量,轨迹组用于控制反应的预处理措施。轨迹组还有助于表征没有良好匹配的主题类别。根据在加拿大蒙特利尔进行的一项大型纵向研究的数据,分析了帮派成员对暴力犯罪的影响,证明了该方法。

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