Search Conferences

Type in any word, words or author name. This searchs through the abstract title, keywords and abstract text and authors. You may search all conferences or just select one conference.


 All Conferences
 EMAC 2019 Annual Conference
 EMAC 2020 Annual Conference
 EMAC 2020 Regional Conference
 EMAC 2021 Annual Conference
 EMAC 2021 Regional Conference
 EMAC 2022 Annual
 EMAC 2022 Regional Conference
 EMAC 2023 Annual
 EMAC 2023 Regional Conference

EMAC 2021 Annual Conference


Does One-size-fit all? Revealing Insights Regarding Context Specific Fit Criteria for Confirmatory Factor Analysis vs. Covariance-based Structural Equation Modeling
(A2021-94546)

Published: May 25, 2021

AUTHORS

Nadine Schröder, WU Wien; Andreas Falke, Regensburg University; Herbert Endres, University of Regensburg

ABSTRACT

Model (mis-)specification in structural equation modeling can cause researchers to arrive at wrong conclusions or missed insights. There are still contradictory results on how well fit criteria can detect misspecification. In two simulation studies and from empirical examples, we reveal two things. First, recommended fit criteria combinations only marginally cover model (mis-) specification because they still accept many misspecified models or reject too many correctly specified models. Second, the ability of fit criteria to detect (mis-) specification differs between confirmatory factor analysis and covariance-based structural equation modeling and is also subject do data and model characteristics. Therefore, we develop context specific criteria combinations, which accept more correctly specified models than previous recommendations while rejecting the vast majority of misspecified models. Thus, researchers do not lose important insights but gain additional insights from their data.