Litcius/Paper detail

Enhancing Model Fit Evaluation in SEM: Practical Tips for Optimizing Chi-Square Tests

Bang Quan Zheng, Peter M. Bentler

2024Structural Equation Modeling A Multidisciplinary Journal46 citationsDOI

Abstract

This paper aims to advocate for a balanced approach to model fit evaluation in structural equation modeling (SEM). The ongoing debate surrounding chi-square test statistics and fit indices has been characterized by ambiguity and controversy. Despite the acknowledged limitations of relying solely on the chi-square test, its careful application can enhance its effectiveness in evaluating model fit and specification. To illustrate this point, we present three common scenarios relevant to social and behavioral science research using Monte Carlo simulations, where fit indices may inadequately address concerns regarding goodness-of-fit, while the chi-square statistic can offer valuable insights. Our recommendation is to report both the chi-square test and fit indices, prioritizing precise model specification to ensure the reliability of model fit indicators.

Topics & Concepts

Structural equation modelingStatisticsSquare (algebra)Goodness of fitMathematicsEconometricsPsychologyComputer scienceGeometryElectron and X-Ray Spectroscopy TechniquesMachine Learning in Materials ScienceNon-Destructive Testing Techniques
Enhancing Model Fit Evaluation in SEM: Practical Tips for Optimizing Chi-Square Tests | Litcius