When can categorical variables be treated as continuous? A comparison of robust continuous and categorical SEM estimation methods under suboptimal conditions.
University of Kansas · University of British Columbia
Abstract
A simulation study compared the performance of robust normal theory maximum likelihood (ML) and robust categorical least squares (cat-LS) methodology for estimating confirmatory factor analysis models with ordinal variables. Data were generated from 2 models with 2-7 categories, 4 sample sizes, 2 latent distributions, and 5 patterns of category thresholds. Results revealed that factor loadings and robust standard errors were generally most accurately estimated using cat-LS, especially with fewer than 5 categories; however, factor correlations and model fit were assessed equally well with ML. Cat-LS was found to be more sensitive to sample size and to violations of the assumption of normality of the underlying…
Citation impact
- FWCI
- 50.87
- Percentile
- 100%
- References
- 65
Authors
3Topics & keywords
- Categorical variable
- Statistics
- Mathematics
- Normality
- Continuous variable
- Sample size determination
- Ordinal data
- Sample (material)