McNeish Daniel, Harring Jeffrey R, Bauer Daniel J
Department of Psychology, Arizona State University.
Department of Human Development and Quantitative Methodology, University of Maryland, College Park.
Psychol Methods. 2023 Aug;28(4):962-992. doi: 10.1037/met0000456. Epub 2022 May 16.
Growth mixture models (GMMs) are a popular method to identify latent classes of growth trajectories. One shortcoming of GMMs is nonconvergence, which often leads researchers to apply covariance equality constraints to simplify estimation, though this may be a dubious assumption. Alternative model specifications have been proposed to reduce nonconvergence without imposing covariance equality constraints. These methods perform well when the correct number of classes is known, but research has not yet examined their use when the number of classes is unknown. Given the importance of selecting the number of classes, more information about class enumeration performance is crucial to assess the potential utility of these methods. We conducted an extensive simulation to explore class enumeration and classification accuracy of model specifications that are more robust to nonconvergence. Results show that the typical approach of applying covariance equality constraints performs quite poorly. Instead, we recommended covariance pattern GMMs because they (a) had the highest convergence rates, (b) were most likely to identify the correct number of classes, and (c) had the highest classification accuracy in many conditions, even with modest sample sizes. An analysis of empirical posttraumatic stress disorder (PTSD) data is provided to show that the typical four-class solution found in many empirical PTSD studies may be an artifact of the covariance equality constraint method that has permeated this literature. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
增长混合模型(GMMs)是一种识别潜在增长轨迹类别的常用方法。GMMs的一个缺点是不收敛,这常常导致研究人员应用协方差相等约束来简化估计,尽管这可能是一个可疑的假设。已经提出了替代模型规范来减少不收敛,而不施加协方差相等约束。当已知正确的类别数量时,这些方法表现良好,但尚未研究在类别数量未知时它们的使用情况。鉴于选择类别数量的重要性,更多关于类别枚举性能的信息对于评估这些方法的潜在效用至关重要。我们进行了广泛的模拟,以探索对不收敛更具鲁棒性的模型规范的类别枚举和分类准确性。结果表明,应用协方差相等约束的典型方法表现相当差。相反,我们推荐协方差模式GMMs,因为它们(a)具有最高的收敛率,(b)最有可能识别正确的类别数量,并且(c)在许多情况下具有最高的分类准确性,即使样本量适中。提供了一项对创伤后应激障碍(PTSD)实证数据的分析,以表明在许多PTSD实证研究中发现的典型四类解决方案可能是渗透到该文献中的协方差相等约束方法的产物。(PsycInfo数据库记录(c)2023美国心理学会,保留所有权利)