Scientific journal paper Q1
Connections between graphical gaussian models and factor analysis
Maria Salgueiro (Salgueiro, M.F.); Peter W. F. Smith (Smith, P.W.F); John W. McDonald (McDonald, J. W.);
Journal Title
Multivariate Behavioral Research
Year (definitive publication)
2010
Language
English
Country
United States of America
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Abstract
Connections between graphical Gaussian models and classical single-factor models are obtained by parameterizing the single-factor model as a graphical Gaussian model. Models are represented by independence graphs, and associations between each manifest variable and the latent factor are measured by factor partial correlations. Power calculations for the single-factor graphical Gaussian model are facilitated by expressing the manifest partial correlations as functions of the factor partial correlations. The power of selecting a graphical Gaussian model with an association structure between manifest variables compatible with a single-factor model is investigated. The results are illustrated using 2 examples: the 1st is a hypothetical factor model with parallel measures. The 2nd uses data from the British Household Panel Survey on job satisfaction.
Acknowledgements
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Keywords
  • Mathematics - Natural Sciences
  • Psychology - Social Sciences
  • Sociology - Social Sciences