Two-step growth mixture model to examine heterogeneity in nonlinear trajectories

Jin Liu, Le Kang, R. Sabo, R. Kirkpatrick, R. Perera
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引用次数: 5

Abstract

Empirical researchers are usually interested in investigating the impacts that baseline covariates have when uncovering sample heterogeneity and separating samples into more homogeneous groups. However, a considerable number of studies in the structural equation modeling (SEM) framework usually start with vague hypotheses in terms of heterogeneity and possible causes. It suggests that (1) the determination and specification of a proper model with covariates is not straightforward, and (2) the exploration process may be computationally intensive given that a model in the SEM framework is usually complicated and the pool of candidate covariates is usually huge in the psychological and educational domain where the SEM framework is widely employed. Following Bakk and Kuha (2017), this article presents a two-step growth mixture model (GMM) that examines the relationship between latent classes of nonlinear trajectories and baseline characteristics. Our simulation studies demonstrate that the proposed model is capable of clustering the nonlinear change patterns, and estimating the parameters of interest unbiasedly, precisely, as well as exhibiting appropriate confidence interval coverage. Considering the pool of candidate covariates is usually huge and highly correlated, this study also proposes implementing exploratory factor analysis (EFA) to reduce the dimension of covariate space. We illustrate how to use the hybrid method, the two-step GMM and EFA, to efficiently explore the heterogeneity of nonlinear trajectories of longitudinal mathematics achievement data.
两步生长混合模型检验非线性轨迹的异质性
实证研究人员通常感兴趣的是调查基线协变量在揭示样本异质性和将样本分为更同质的组时所产生的影响。然而,在结构方程建模(SEM)框架中,相当多的研究通常从异质性和可能原因方面的模糊假设开始。这表明:(1)具有协变量的适当模型的确定和规范并不简单,(2)考虑到SEM框架中的模型通常很复杂,并且在广泛使用SEM框架的心理和教育领域,候选协变量库通常很大,探索过程可能是计算密集型的。继Bakk和Kuha(2017)之后,本文提出了一个两步增长混合模型(GMM),该模型考察了非线性轨迹的潜在类别与基线特征之间的关系。我们的仿真研究表明,所提出的模型能够对非线性变化模式进行聚类,无偏、准确地估计感兴趣的参数,并表现出适当的置信区间覆盖率。考虑到候选协变量库通常庞大且高度相关,本研究还建议实施探索性因素分析(EFA)来降低协变量空间的维数。我们说明了如何使用混合方法,即两步GMM和EFA,来有效地探索纵向数学成绩数据非线性轨迹的异质性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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