Litcius/Paper detail

Under-Fitting and Over-Fitting: The Performance of Bayesian Model Selection and Fit Indices in SEM

Sarah Depaoli, Sonja D. Winter, Haiyan Liu

2023Structural Equation Modeling A Multidisciplinary Journal10 citationsDOI

Abstract

We extended current knowledge by examining the performance of several Bayesian model fit and comparison indices through a simulation study using the confirmatory factor analysis. Our goal was to determine whether commonly implemented Bayesian indices can detect specification errors. Specifically, we wanted to uncover any differences in detecting under-fitting or over-fitting a model. We examined a conventional Bayesian fit index (the posterior predictive p-value), approximate Bayesian fit indices (Bayesian RMSEA, CFI, and TLI), and model comparison indices (BIC and DIC). We varied the type and severity of model mis-specification, sample size, and priors. We focused on the ability of these indices to detect model under- or over-fitting. We provide practical advice for applied researchers regarding how to assess and compare models using these common indices implemented in the Bayesian framework.

Topics & Concepts

Bayesian probabilityModel selectionPrior probabilityStatisticsBayes factorComputer scienceBayesian inferenceEconometricsBayesian linear regressionBayesian information criterionBayesian averageStructural equation modelingArtificial intelligenceMathematicsStatistical Methods and Bayesian InferenceStatistical Methods in Clinical TrialsEconomic and Environmental Valuation