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Analyzing latent state-trait and multiple-indicator latent growth curve models as multilevel structural equation models

机译:分析潜在状态特征和多指标潜在增长曲线模型作为多级结构方程模型

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摘要

Latent state-trait (LST) and latent growth curve (LGC) models are frequently used in the analysis of longitudinal data. Although it is well-known that standard single-indicator LGC models can be analyzed within either the structural equation modeling (SEM) or multilevel (ML; hierarchical linear modeling) frameworks, few researchers realize that LST and multivariate LGC models, which use multiple indicators at each time point, can also be specified as ML models. In the present paper, we demonstrate that using the ML-SEM rather than the SL-SEM framework to estimate the parameters of these models can be practical when the study involves (1) a large number of time points, (2) individually-varying times of observation, (3) unequally spaced time intervals, and/or (4) incomplete data. Despite the practical advantages of the ML-SEM approach under these circumstances, there are also some limitations that researchers should consider. We present an application to an ecological momentary assessment study (N = 158 youths with an average of 23.49 observations of positive mood per person) using the software Mplus (Muthén and Muthén, ) and discuss advantages and disadvantages of using the ML-SEM approach to estimate the parameters of LST and multiple-indicator LGC models.
机译:潜在状态特征(LST)和潜在生长曲线(LGC)模型经常用于纵向数据分析。尽管众所周知,可以在结构方程模型(SEM)或多级(ML;分层线性建模)框架中分析标准的单指标LGC模型,但很少有研究者意识到使用多个指标的LST和多元LGC模型在每个时间点,也可以指定为ML模型。在本文中,我们证明了当研究涉及(1)大量时间点(2)各个变量时,使用ML-SEM而不是SL-SEM框架来估计这些模型的参数是可行的。观测时间,(3)时间间隔不相等和/或(4)数据不完整。尽管在这种情况下ML-SEM方法具有实际优势,但研究人员还应考虑一些限制。我们使用Mplus软件(Muthén和Muthén,)为生态瞬时评估研究(N = 158名年轻人,平均每人平均积极情绪观察值为23.49)提供了一个应用程序,并讨论了使用ML-SEM方法进行利弊的研究估计LST和多指标LGC模型的参数。

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