| Literature DB >> 29781710 |
Steffen Zitzmann1,2.
Abstract
Over the last decade or two, multilevel structural equation modeling (ML-SEM) has become a prominent modeling approach in the social sciences because it allows researchers to correct for sampling and measurement errors and thus to estimate the effects of Level 2 (L2) constructs without bias. Because the latent variable modeling software Mplus uses maximum likelihood (ML) by default, many researchers in the social sciences have applied ML to obtain estimates of L2 regression coefficients. However, one drawback of ML is that covariance matrices of the predictor variables at L2 tend to be degenerate, and thus, estimates of L2 regression coefficients tend to be rather inaccurate when sample sizes are small. In this article, I show how an approach for stabilizing covariance matrices at L2 can be used to obtain more accurate estimates of L2 regression coefficients. A simulation study is conducted to compare the proposed approach with ML, and I illustrate its application with an example from organizational research.Entities:
Keywords: Multilevel modeling; maximum likelihood; stabilization; stepwise estimation; structural equation modeling
Mesh:
Year: 2018 PMID: 29781710 DOI: 10.1080/00273171.2018.1469086
Source DB: PubMed Journal: Multivariate Behav Res ISSN: 0027-3171 Impact factor: 5.923