Modeling model misspecification in structural equation models

Journal articleResearchPeer reviewed

Publication data


ByAlexander Robitzsch
Original languageEnglish
Published inStats, 6(2)
Pages689-705
Editor (Publisher)MDPI
ISSN2571-905X
DOI/Linkhttps://doi.org/10.3390/stats6020044 (Open Access)
Publication statusPublished – 06.2023

Structural equation models constrain mean vectors and covariance matrices and are frequently applied in the social sciences. Frequently, the structural equation model is misspecified to some extent. In many cases, researchers nevertheless intend to work with a misspecified target model of interest. In this article, a simultaneous statistical inference for sampling errors and model misspecification errors is discussed. A modified formula for the variance matrix of the parameter estimate is obtained by imposing a stochastic model for model errors and applying M-estimation theory. The presence of model errors is quantified in increased standard errors in parameter estimates. The proposed inference is illustrated with several analytical examples and an empirical application.