Publication | Closed Access
Comparing Exploratory Structural Equation Modeling and Existing Approaches for Multiple Regression with Latent Variables
108
Citations
31
References
2018
Year
Multiple RegressionEducationRegression AnalysisPsychometricsPsychologyCausal InferenceSimultaneous Equation ModelingParallel AnalysisLatent ModelingExisting ApproachesFactor AnalysisLatent VariablesStatisticsStructural Equation ModelingPsychiatryLatent StructureLatent Variable ModelExploratory Factor AnalysisEconometrics
Exploratory structural equation modeling (ESEM) is an approach for analysis of latent variables using exploratory factor analysis to evaluate the measurement model. This study compared ESEM with two dominant approaches for multiple regression with latent variables, structural equation modeling (SEM) and manifest regression analysis (MRA). Main findings included: (1) ESEM in general provided the least biased estimation of the regression coefficients; SEM was more biased than MRA given large cross-factor loadings. (2) MRA produced the most precise estimation, followed by ESEM and then SEM. (3) SEM was the least powerful in the significance tests; statistical power was lower for ESEM than MRA with relatively small target-factor loadings, but higher for ESEM than MRA with relatively large target-factor loadings. (4) ESEM showed difficulties in convergence and occasionally created an inflated type I error rate under some conditions. ESEM is recommended when non-ignorable cross-factor loadings exist.
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