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首页> 外文期刊>Structural equation modeling >Detecting Unobserved Heterogeneity in Latent Growth Curve Models
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Detecting Unobserved Heterogeneity in Latent Growth Curve Models

机译:在潜在增长曲线模型中检测未观察到的异质性

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摘要

Growth mixture models combine latent growth curve models and finite mixture models to examine the existence of latent classes that follow distinct developmental patterns. Analyses based on these models are becoming quite common in social and behavioral science research because of recent advances in computing, the availability of specialized statistical programs, and the ease of programming. In this article, we show how mixture models can be fit to examine the presence of multiple latent classes by algorithmically grouping or clustering individuals who follow the same estimated growth trajectory based on an evaluation of individual case residuals. The approach is illustrated using empirical longitudinal data along with an easy to use computerized implementation.
机译:增长混合模型结合了潜在的增长曲线模型和有限的混合模型,以检查遵循不同发展模式的潜在类的存在。基于这些模型的分析在社会和行为科学研究中正变得非常普遍,这是由于计算的最新进展,专用统计程序的可用性以及编程的简便性。在本文中,我们展示了如何通过对个体案例残差进行评估,对遵循相同估计增长轨迹的个体进行算法分组或聚类,从而使混合模型适合于检查多个潜在类别的存在。使用经验纵向数据以及易于使用的计算机实现来说明该方法。

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