Subgroup detection in linear growth curve models with generalized linear mixed model (GLMM) trees.

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2024-10-01 Epub Date: 2024-05-29 DOI:10.3758/s13428-024-02389-1
Marjolein Fokkema, Achim Zeileis
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Abstract

Growth curve models are popular tools for studying the development of a response variable within subjects over time. Heterogeneity between subjects is common in such models, and researchers are typically interested in explaining or predicting this heterogeneity. We show how generalized linear mixed-effects model (GLMM) trees can be used to identify subgroups with different trajectories in linear growth curve models. Originally developed for clustered cross-sectional data, GLMM trees are extended here to longitudinal data. The resulting extended GLMM trees are directly applicable to growth curve models as an important special case. In simulated and real-world data, we assess performance of the extensions and compare against other partitioning methods for growth curve models. Extended GLMM trees perform more accurately than the original algorithm and LongCART, and similarly accurate compared to structural equation model (SEM) trees. In addition, GLMM trees allow for modeling both discrete and continuous time series, are less sensitive to (mis-)specification of the random-effects structure and are much faster to compute.

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使用广义线性混合模型 (GLMM) 树检测线性增长曲线模型中的亚组。
增长曲线模型是研究受试者体内反应变量随时间变化发展情况的常用工具。受试者之间的异质性在此类模型中很常见,研究人员通常对解释或预测这种异质性感兴趣。我们展示了如何利用广义线性混合效应模型(GLMM)树来识别线性生长曲线模型中具有不同轨迹的亚组。GLMM 树最初是针对聚类横截面数据开发的,在此扩展到纵向数据。扩展后的 GLMM 树作为一个重要的特例,可直接应用于生长曲线模型。在模拟数据和真实世界数据中,我们评估了扩展方法的性能,并与其他用于增长曲线模型的划分方法进行了比较。扩展的 GLMM 树比原始算法和 LongCART 更精确,与结构方程模型 (SEM) 树相比也同样精确。此外,GLMM 树既能对离散时间序列建模,也能对连续时间序列建模,对随机效应结构的(错误)规范不那么敏感,而且计算速度更快。
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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
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Publisher Correction: Dimensionality and optimal combination of autonomic fear-conditioning measures in humans. Author Correction: Discovering trends of social interaction behavior over time: An introduction to relational event modeling. Author Correction: r2mlm: An R package calculating R-squared measures for multilevel models. Correction: Development and validation of the Emotional Climate Change Stories (ECCS) stimuli set. Geofencing in location-based behavioral research: Methodology, challenges, and implementation.
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