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The performance of latent growth curve model-based structural equation model trees to uncover population heterogeneity in growth trajectories

机译:基于潜在生长曲线模型的结构方程模型树木在生长轨迹中揭露群体异质性的性能

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摘要

Behavioral researchers have shown growing interest in structural equation model trees (SEM Trees), a new recursive partitioning-based technique for detecting population heterogeneity. In the present research, we conducted a large-scale simulation to investigate the performance of latent growth curve model (LGCM)-based SEM Trees for uncovering between-individual differences in patterns of within-individual change. Simulation results showed that the correct estimation rates of the number of classes are most strongly related to the agreement rate of the covariate with its true latent profile, and the number of true classes also has a serious negative impact on correct estimation rates of the number of classes. SEM Trees is not always sensitive to the influence of model misspecification, and its impact differs according to a complex function of the types of misspecification as well as the statistical properties of the template model. On the whole, LGCM-based SEM Trees is a robust and stable approach under possible model misspecifications.
机译:行为研究人员已经表现出对结构方程模型树(SEM树)的兴趣,一种用于检测群体异质性的新的递归分配技术。在本研究中,我们进行了大规模的模拟,以研究潜伏的生长曲线模型(LGCM)的综合SEM树木的性能,以揭示各个变化模式的各个差异。仿真结果表明,课程数量的正确估计率与协变量与其真正的潜在概况的协议率最强烈相关,而真正的课程数量也对正确的估算率有严重的负面影响课程。 SEM树并不总是对模型误操作的影响敏感,并且它的影响根据错失类型的复杂功能以及模板模型的统计特性。在整体上,基于LGCM的SEM树是一种稳健稳定的方法,可以在可能的模型误操作。

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