Title of article
Effects of Latent Variable Nonnormality and Model Misspecification on Testing Structural Equation Modeling Interactions
Author/Authors
Shaojing Sun، نويسنده , , Timothy R. Konold & Xitao Fan ، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
26
From page
231
To page
256
Abstract
Interest in testing interaction terms within the latent variable modeling framework has been on the rise in recent years. However, little is known about the influence of nonnormality and model misspecification on such models that involve latent variable interactions. The authors used Mattsonʹs data generation method to control for latent variable distributional properties, and they examined how data nonnormality and model misspecification affected latent variable interaction models in relation to varying sample sizes and different magnitudes of incorrectly constrained model parameters. The authors conducted 600 replications for each of the 54 configurations of the 4-factor completely crossed balanced deign. In general, results were suggestive of less bias under conditions of latent variable normality, large sample sizes, correctly specified models, and smaller parameters that were incorrectly constrained (i.e., misspecified). Similarly, these conditions were also found to produce better fitting models as gauged by several popular measures of model fit.
Keywords
latent variable interaction , model fit , model misspecification , structural equation model , nonnormality , parameter estimate
Journal title
The Journal of Experimental Education
Serial Year
2011
Journal title
The Journal of Experimental Education
Record number
708795
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