Beltz Adriene M, Molenaar Peter C M
a Department of Human Development and Family Studies , The Pennsylvania State University.
Multivariate Behav Res. 2016 Mar-Jun;51(2-3):357-73. doi: 10.1080/00273171.2016.1151333. Epub 2016 Apr 19.
Structural vector autoregressive models (VARs) hold great potential for psychological science, particularly for time series data analysis. They capture the magnitude, direction of influence, and temporal (lagged and contemporaneous) nature of relations among variables. Unified structural equation modeling (uSEM) is an optimal structural VAR instantiation, according to large-scale simulation studies, and it is implemented within an SEM framework. However, little is known about the uniqueness of uSEM results. Thus, the goal of this study was to investigate whether multiple solutions result from uSEM analysis and, if so, to demonstrate ways to select an optimal solution. This was accomplished with two simulated data sets, an empirical data set concerning children's dyadic play, and modifications to the group iterative multiple model estimation (GIMME) program, which implements uSEMs with group- and individual-level relations in a data-driven manner. Results revealed multiple solutions when there were large contemporaneous relations among variables. Results also verified several ways to select the correct solution when the complete solution set was generated, such as the use of cross-validation, maximum standardized residuals, and information criteria. This work has immediate and direct implications for the analysis of time series data and for the inferences drawn from those data concerning human behavior.
结构向量自回归模型(VARs)对心理学具有巨大潜力,特别是在时间序列数据分析方面。它们能够捕捉变量之间关系的大小、影响方向以及时间(滞后和同期)特性。根据大规模模拟研究,统一结构方程建模(uSEM)是一种优化的结构VAR实例化方法,并且它是在结构方程模型(SEM)框架内实现的。然而,对于uSEM结果的独特性却知之甚少。因此,本研究的目的是探究uSEM分析是否会产生多种解决方案,如果是,要展示选择最优解决方案的方法。这通过两个模拟数据集、一个关于儿童二元游戏的实证数据集以及对群体迭代多模型估计(GIMME)程序的修改得以实现,该程序以数据驱动的方式实现了具有群体和个体层面关系的uSEM。结果表明,当变量之间存在较大的同期关系时会产生多种解决方案。研究结果还验证了在生成完整解集时选择正确解决方案的几种方法,例如使用交叉验证、最大标准化残差和信息准则。这项工作对时间序列数据的分析以及从这些数据中得出的关于人类行为的推论具有直接且即时的意义。