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Contribution Details

Type Book Chapter
Scope Discipline-based scholarship
Title Measurement invariance analysis using multiple group confirmatory factor analysis and alignment optimisation
Organization Unit
Authors
  • Eldad Davidov
  • Bart Meuleman
Editors
  • Fons J R Van de Vijver
  • Francesco Avvisati
  • Eldad Davidov
  • Michael Eid
  • Noémie Le Donné
  • Jean-Paul Fox
  • Kimberley Lek
  • Bart Meuleman
  • Marco Paccagnella
  • Rens van de Schoot
Item Subtype Original Work
Refereed No
Status Published in final form
Language
  • English
Booktitle Invariance Analyses in Large-Scale Studies
Series Name OECD Education Working Papers
ISSN 1993-9019
Number 201
Place of Publication Paris
Publisher OECD Publishing
Page Range 15 - 22
Date 2019
Abstract Text Large-scale surveys such as the Programme for International Student Assessment (PISA), the Teaching and Learning International Survey (TALIS), and the Programme for the International Assessment of Adult Competences (PIAAC) use advanced statistical models to estimate scores of latent traits from multiple observed responses. The comparison of such estimated scores across different groups of respondents is valid to the extent that the same set of estimated parameters holds in each group surveyed. This issue of invariance of parameter estimates is addressed in model fit indices which gauge the likelihood that one set of parameters can be used across all groups. Therefore, the problem of scale invariance across groups of respondents can typically be framed as the question of how well a single model fits the responses of all groups. However, the procedures used to evaluate the fit of these models pose a series of theoretical and practical problems. The most commonly applied procedures to establish invariance of cognitive and non-cognitive scales across countries in large-scale surveys are developed within the framework of confirmatory factor analysis and item response theory. The criteria that are commonly applied to evaluate the fit of such models, such as the decrement of the Comparative Fit Index in confirmatory factor analysis, work normally well in the comparison of a small number of countries or groups, but can perform poorly in large-scale surveys featuring a large number of countries. More specifically, the common criteria often result in the non-rejection of metric invariance; however, the step from metric invariance (i.e. identical factor loadings across countries) to scalar invariance (i.e. identical intercepts, in addition to identical factor loadings) appears to set overly restrictive standards for scalar invariance (i.e. identical intercepts). This report sets out to identify and apply novel procedures to evaluate model fit across a large number of groups, or novel scaling models that are more likely to pass common model fit criteria.
Free access at Official URL
Official URL https://www.oecd-ilibrary.org/education/invariance-analyses-in-large-scale-studies_254738dd-en
Digital Object Identifier 10.1787/254738dd-en
Other Identification Number merlin-id:18019
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