Further exploration of the effects of time-varying covariate in growth mixture models with nonlinear trajectories.

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2024-04-01 Epub Date: 2023-08-14 DOI:10.3758/s13428-023-02183-5
Jin Liu, Robert A Perera
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Abstract

Growth mixture modeling (GMM) is an analytical tool for identifying multiple unobserved sub-populations in longitudinal processes. In particular, it describes change patterns within each latent sub-population and investigates between-individual differences in within-individual change for each sub-group. A key research interest in using GMMs is examining how covariates influence the heterogeneity in change patterns. Liu & Perera (2022b) extended mixture-of-experts (MoE) models, which primarily focus on time-invariant covariates, to allow covariates to account for both within-group and between-group differences and investigate the heterogeneity in nonlinear trajectories. The present study further extends Liu & Perera, 2022b by examining the effects of time-varying covariates (TVCs) on trajectory heterogeneity. Specifically, we propose methods to decompose a TVC into an initial trait (the baseline value of the TVC) and a set of temporal states (interval-specific slopes or changes of the TVC). The initial trait is allowed to account for within-group differences in growth factors of trajectories (i.e., baseline effect), while the temporal states are allowed to impact observed values of a longitudinal process (i.e., temporal effects). We evaluate the proposed models using a simulation study and real-world data analysis. The simulation study demonstrates that the proposed models are capable of separating trajectories into several clusters and generally producing unbiased and accurate estimates with target coverage probabilities. The proposed models reveal the heterogeneity in initial trait and temporal states of reading ability across latent classes of students' mathematics performance. Additionally, the baseline and temporal effects on mathematics development of reading ability are also heterogeneous across the clusters of students.

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进一步探索具有非线性轨迹的增长混合模型中时变协变量的影响。
增长混合模型(GMM)是一种分析工具,用于识别纵向过程中多个未观察到的子群。特别是,它可以描述每个潜在子群内部的变化模式,并研究每个子群个体内部变化的个体间差异。使用 GMMs 的一个主要研究兴趣是研究协变量如何影响变化模式的异质性。Liu & Perera (2022b) 扩展了主要关注时间不变协变量的专家混合物(MoE)模型,允许协变量同时考虑组内和组间差异,并研究了非线性轨迹的异质性。本研究进一步扩展了 Liu & Perera,2022b,研究了时变协变量(TVC)对轨迹异质性的影响。具体来说,我们提出了将 TVC 分解为一个初始特征(TVC 的基线值)和一组时间状态(TVC 的特定时间间隔斜率或变化)的方法。初始性状可用于解释轨迹增长因子的组内差异(即基线效应),而时间状态可用于影响纵向过程的观测值(即时间效应)。我们通过模拟研究和实际数据分析对所提出的模型进行了评估。模拟研究表明,所提出的模型能够将轨迹分离成若干个群组,并且通常能够产生无偏且准确的估计值,并具有目标覆盖概率。所提出的模型揭示了学生数学成绩潜在类别中阅读能力的初始特质和时间状态的异质性。此外,阅读能力对数学发展的基线效应和时间效应在不同群组的学生中也具有异质性。
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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.
期刊最新文献
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