Teacher’s Corner: Evaluating Informative Hypotheses Using the Bayes Factor in Structural Equation Models
Publication date
2021
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cc_by_nc_nd
Abstract
This Teacher’s Corner paper introduces Bayesian evaluation of informative hypotheses for structural equation models, using the free open-source R packages bain, for Bayesian informative hypothesis testing, and lavaan, a widely used SEM package. The introduction provides a brief non-technical explanation of informative hypotheses, the statistical underpinnings of Bayesian hypothesis evaluation, and the bain algorithm. Three tutorial examples demonstrate informative hypothesis evaluation in the context of common types of structural equation models: 1) confirmatory factor analysis, 2) latent variable regression, and 3) multiple group analysis. We discuss hypothesis formulation, the interpretation of Bayes factors and posterior model probabilities, and sensitivity analysis.
Keywords
Bain, bayes factor, informative hypotheses, structural equation modeling, General Decision Sciences, Modelling and Simulation, Sociology and Political Science, Economics, Econometrics and Finance(all)
Citation
Van Lissa, C J, Gu, X, Mulder, J, Rosseel, Y, Van Zundert, C & Hoijtink, H 2021, 'Teacher’s Corner : Evaluating Informative Hypotheses Using the Bayes Factor in Structural Equation Models', Structural Equation Modeling, vol. 28, no. 2, pp. 292-301 . https://doi.org/10.1080/10705511.2020.1745644