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When can categorical variables be treated as continuous? A comparison of robust continuous and categorical SEM estimation methods under suboptimal conditions.

2012· article· en· 2 534 citations· W1970325005 sur OpenAlex· 10.1037/a0029315

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Résumé

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 continuous variables. Normal theory ML was found to be more sensitive to asymmetric category thresholds and was especially biased when estimating large factor loadings. Accordingly, we recommend cat-LS for data sets containing variables with fewer than 5 categories and ML when there are 5 or more categories, sample size is small, and category thresholds are approximately symmetric. With 6-7 categories, results were similar across methods for many conditions; in these cases, either method is acceptable.

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La notice

Revue
Psychological Methods
Thématique
Reliability and Agreement in Measurement
Domaine
Decision Sciences
Établissements canadiens
University of British Columbia
Organismes subventionnaires
Social Sciences and Humanities Research Council of Canada
Mots-clés
Categorical variableStatisticsMathematicsNormalityContinuous variableSample size determinationOrdinal dataSample (material)Latent variableConfirmatory factor analysisEconometricsStructural equation modeling
Résumé présent dans OpenAlex
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