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A Systematic Evaluation and Comparison Between Exploratory Structural Equation Modeling and Bayesian Structural Equation Modeling
56
Citations
47
References
2019
Year
EngineeringPsychometricsBayesian SemsCausal InferencePsychologySimultaneous Equation ModelingLatent ModelingData ScienceManagementBiostatisticsSystematic EvaluationPublic HealthStatisticsStructural Equation ModelingUnstable EstimationPsychological StructureEstimation StatisticLatent Variable ModelModel ComparisonFunctional Data AnalysisEconometricsStatistical InferenceComplex Data
In this study, we contrast two competing approaches, not previously compared, that balance the rigor of CFA/SEM with the flexibility to fit realistically complex data. Exploratory SEM (ESEM) is claimed to provide an optimal compromise between EFA and CFA/SEM. Alternatively, a family of three Bayesian SEMs (BSEMs) replace fixed-zero estimates with informative, small-variance priors for different subsets of parameters: cross-loadings (CL), residual covariances (RC), or CLs and RCs (CLRC). In Study 1, using three simulation studies, results showed that (1) BSEM-CL performed more closely to ESEM; (2) BSEM-CLRC did not provide more accurate model estimation compared with BSEM-CL; (3) BSEM-RC provided unstable estimation; and (4) different specifications of targeted values in ESEM and informative priors in BSEM have significant impacts on model estimation. The real data analysis (Study 2) showed that the differences in estimation between different models were largely consistent with those in Study1 but somewhat smaller.
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