Evaluating Model Fit in Bayesian Confirmatory Factor Analysis With Large Samples: Simulation Study Introducing the BRMSEA

Publication date

2018-08-01

Authors

Hoofs, Huub
Schoot, Rens van deISNI 0000000393562696
Jansen, Nicole W.H.
Kant, IJmert

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Supervisors

Document Type

Article
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Abstract

Bayesian confirmatory factor analysis (CFA) offers an alternative to frequentist CFA based on, for example, maximum likelihood estimation for the assessment of reliability and validity of educational and psychological measures. For increasing sample sizes, however, the applicability of current fit statistics evaluating model fit within Bayesian CFA is limited. We propose, therefore, a Bayesian variant of the root mean square error of approximation (RMSEA), the BRMSEA. A simulation study was performed with variations in model misspecification, factor loading magnitude, number of indicators, number of factors, and sample size. This showed that the 90% posterior probability interval of the BRMSEA is valid for evaluating model fit in large samples (N≥ 1,000), using cutoff values for the lower (

Keywords

Bayesian procedures, factor analysis, model fit, simulation, validity

Citation

Hoofs, H, van de Schoot, R, Jansen, N W H & Kant, IJ 2018, 'Evaluating Model Fit in Bayesian Confirmatory Factor Analysis With Large Samples: Simulation Study Introducing the BRMSEA', Educational and Psychological Measurement, vol. 78, no. 4, pp. 537-568. https://doi.org/10.1177/0013164417709314