将异质方差的定位-尺度模型指定为多水平结构方程模型

Specifying Location-Scale Models for Heterogeneous Variances as Multilevel SEMs

ORGANIZATIONAL RESEARCH METHODS · 2020
被引 60
人大 A-ABS 4

中文导读

介绍如何将同时预测均值和方差的定位-尺度模型作为多水平结构方程模型在Mplus中实现,并提供教程和代码,对组织科学研究者有用。

Abstract

Standard multilevel models focus on variables that predict the mean while the within-group variability is largely treated as a nuisance. Recent work has shown the advantage of including predictors for both the mean (the location submodel) and the variability (the scale submodel) within a single model. Constrained versions of the model can be fit in standard mixed effect model software, but the most general version with random effects in each of the location and scale submodels has been noted for being difficult to fit and estimate in software. However, the latest release of Mplus includes new capabilities that facilitate fitting the general version of the model as a multilevel structural equation model (SEM). This article introduces the general form of the model that includes location and scale random effects (called the location-scale model) and notes how it can be envisioned as a multilevel SEM. We provide a tutorial with example analyses and Mplus code for the model with two-level cross-sectional data and three-level repeated measures data and discuss how such a model has potential to extend recent developments in organizational science.

多水平模型结构方程模型异质方差组织科学