Go Back Research Article November, 2009

Teacher's Corner: Testing Measurement Invariance of Second-Order Factor Models

Abstract

We illustrate testing measurement invariance in a second-order factor model using a quality of life dataset (n = 924). Measurement invariance was tested across 2 groups at a set of hierarchically structured levels: (a) configural invariance, (b) first-order factor loadings, (c) second-order factor loadings, (d) intercepts of measured variables, (e) intercepts of first-order factors, (f) disturbances of first-order factors, and (g) residual variances of observed variables. Given that measurement invariance at the factor loading and intercept levels was achieved, the latent factor mean difference on the higher order factor between the groups was also estimated. The analyses were performed on the mean and covariance structures within the framework of the confirmatory factor analysis using the LISREL 8.51 program. Implications of second-order factor models and measurement invariance in psychological research were discussed.

Keywords

Measurement Invariance Second-Order Factor Models Quality of Life Dataset Configural Invariance First-Order Factor Loadings Second-Order Factor Loadings Intercept Testing Latent Factor Mean Difference Mean and Covariance Structures Confirmatory Factor Analysis (CFA) LISREL 8.51 Psychological Research Model Testing Factor Model Analysis Structural Equation Modeling Factor Structure Comparison Hierarchical Models Measurement Consistency Invariance Testing Statistical Analysis
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Volume 12
Issue 3
Pages 471-492
ISSN 1532-8007
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