Item factor analysis: Current approaches and future directions.
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- 1 March 2007
- journal article
- Published by American Psychological Association (APA) in Psychological Methods
- Vol. 12 (1), 58-79
- https://doi.org/10.1037/1082-989x.12.1.58
Abstract
The rationale underlying factor analysis applies to continuous and categorical variables alike; however, the models and estimation methods for continuous (i.e., interval or ratio scale) data are not appropriate for item-level data that are categorical in nature. The authors provide a targeted review and synthesis of the item factor analysis (IFA) estimation literature for ordered-categorical data (e.g., Likert-type response scales) with specific attention paid to the problems of estimating models with many items and many factors. Popular IFA models and estimation methods found in the structural equation modeling and item response theory literatures are presented. Following this presentation, recent developments in the estimation of IFA parameters (e.g., Markov chain Monte Carlo) are discussed. The authors conclude with considerations for future research on IFA, simulated examples, and advice for applied researchers.Keywords
Funding Information
- National Institute on Drug Abuse (F31DA017546, R01DA015398)
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