Affordable Access

An evaluation of non-iterative estimators in confirmatory factor analysis

Authors
  • Dhaene, Sara
  • Rosseel, Yves
Publication Date
Jan 01, 2024
Source
Ghent University Institutional Archive
Keywords
Language
English
License
Green
External links

Abstract

In confirmatory factor analysis (CFA), model parameters are usually estimated by iteratively minimizing the Maximum Likelihood (ML) fit function. In optimal circumstances, the ML estimator yields the desirable statistical properties of asymptotic unbiasedness, efficiency, normality, and consistency. In practice, however, real-life data tend to be far from optimal, making the algorithm prone to convergence failure, inadmissible solutions, and bias. In this study, we revisited some old, yet largely neglected non-iterative alternatives and compared their performance to more recently proposed procedures in an extensive simulation study. We conclude that closed-form expressions may serve as viable alternatives for ML, with the Multiple Group Method - the oldest method under consideration - showing favorable results across all settings.

Report this publication

Statistics

Seen <100 times