| Literature DB >> 30636780 |
Yanyun Yang1, Yan Xia2.
Abstract
When item scores are ordered categorical, categorical omega can be computed based on the parameter estimates from a factor analysis model using frequentist estimators such as diagonally weighted least squares. When the sample size is relatively small and thresholds are different across items, using diagonally weighted least squares can yield a substantially biased estimate of categorical omega. In this study, we applied Bayesian estimation methods for computing categorical omega. The simulation study investigated the performance of categorical omega under a variety of conditions through manipulating the scale length, number of response categories, distributions of the categorical variable, heterogeneities of thresholds across items, and prior distributions for model parameters. The Bayes estimator appears to be a promising method for estimating categorical omega. Mplus and SAS codes for computing categorical omega were provided.Keywords: Bayesian estimation; categorical omega; factor analysis; prior specification; small sample size
Year: 2018 PMID: 30636780 PMCID: PMC6318744 DOI: 10.1177/0013164417752008
Source DB: PubMed Journal: Educ Psychol Meas ISSN: 0013-1644 Impact factor: 2.821