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作为潜在变量多组因素模型的潜在增长混合模型:对麦克内什等人(2023年)的评论。

Latent growth mixture models as latent variable multigroup factor models: Comment on McNeish et al. (2023).

作者信息

Wood Phillip K, Wiedermann Wolfgang, Wood Jules K

机构信息

Department of Psychological Sciences, University of Missouri.

Department of Educational, School, and Counseling Psychology, University of Missouri.

出版信息

Psychol Methods. 2024 Sep 12. doi: 10.1037/met0000693.

DOI:10.1037/met0000693
PMID:39264646
Abstract

McNeish et al. argue for the general use of covariance pattern growth mixture models because these models do not involve the assumption of random effects, demonstrate high rates of convergence, and are most likely to identify the correct number of latent subgroups. We argue that the covariance pattern growth mixture model is a single random intercept model. It and other models considered in their article are special cases of a general model involving slope and intercept factors. We argue growth mixture models are multigroup invariance hypotheses based on unknown subgroups. Psychometric models in which trajectories are modeled using slope factor loadings which vary by latent subgroup are often conceptually preferable. Convergence rates for mixture models can be substantially improved by using a variance component start value taken from analyses with one fewer class and by specifying multifactor models in orthogonal form. No single latent growth model is appropriate across all research contexts and, instead, the most appropriate latent mixture model must be "right-sized" to the data under consideration. Reanalysis of a real-world longitudinal data set of posttraumatic stress disorder symptomatology reveals a three-group model involving exponential decline, further suggesting that the four-group "cat's cradle" pattern frequently reported is artefactual. (PsycInfo Database Record (c) 2025 APA, all rights reserved).

摘要

麦克尼什等人主张普遍使用协方差模式增长混合模型,因为这些模型不涉及随机效应假设,具有高收敛率,并且最有可能识别出正确数量的潜在亚组。我们认为协方差模式增长混合模型是一个单随机截距模型。它以及他们文章中考虑的其他模型是一个涉及斜率和截距因素的一般模型的特殊情况。我们认为增长混合模型是基于未知亚组的多组不变性假设。使用因潜在亚组而异的斜率因素负荷来对轨迹进行建模的心理测量模型通常在概念上更可取。通过使用从少一个类别的分析中获取的方差成分起始值,并以正交形式指定多因素模型,可以大幅提高混合模型的收敛率。没有单一的潜在增长模型适用于所有研究情境,相反,最合适的潜在混合模型必须根据所考虑的数据“调整大小”。对创伤后应激障碍症状学的真实世界纵向数据集的重新分析揭示了一个涉及指数下降的三组模型,进一步表明经常报道的四组“猫的摇篮”模式是人为造成的。(《心理学文摘数据库记录》(c)2025美国心理学会,保留所有权利)

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