This paper reports on a simulation study that evaluated the performance of five structural equation model test statistics appropriate for categorical data. Both Type I error rate and power were investigated. Different model sizes, sample sizes, numbers of categories, and threshold distributions were considered. Statistics associated with both the diagonally weighted least squares (cat-DWLS) estimator and with the unweighted least squares (cat-ULS) estimator were studied. Recent research suggests that cat-ULS parameter estimates and robust standard errors slightly outperform cat-DWLS estimates and robust standard errors (Forero, Maydeu-Olivares, & Gallardo-Pujol, 2009). The findings of the present research suggest that the mean- and variance...
This thesis consists of four papers that deal with several aspects of the measurement of model fit f...
The use of goodness-of-fit test statistics for discrete or categorical data is widespread throughout...
The feasibility of maximum likelihood (ML) analyses of marginal distributions of repeated categorica...
In general linear models for categorical data analysis, goodness-of-fit statistics only provide a br...
A paucity of research has compared estimation methods within a measurement invariance (MI) framework...
A paucity of research has compared estimation methods within a measurement invariance (MI) framework...
A significant aspect of data modeling with categorical predictors is the definition of a saturated m...
Case diagnostics in categorical factor analysis include Mahalanobis distance-based statistics, which...
Robust estimation methods for SEM models that include ordered categorical data are currently availab...
The asymptotically distribution-free (ADF) test statistic depends on very mild distributional assump...
The analysis of ordered response categorical data has received increasing attention in recent years ...
Hypotheses about the relationship among variables in a multiway contingency table may be tested by a...
<p>This study examined the effect of model size on the chi-square test statistics obtained from ordi...
Type I error control and statistical power of four methods of testing group differences on an ordere...
In this paper, ordered categorical variables are used to compare between linear and nonlinear Bayesi...
This thesis consists of four papers that deal with several aspects of the measurement of model fit f...
The use of goodness-of-fit test statistics for discrete or categorical data is widespread throughout...
The feasibility of maximum likelihood (ML) analyses of marginal distributions of repeated categorica...
In general linear models for categorical data analysis, goodness-of-fit statistics only provide a br...
A paucity of research has compared estimation methods within a measurement invariance (MI) framework...
A paucity of research has compared estimation methods within a measurement invariance (MI) framework...
A significant aspect of data modeling with categorical predictors is the definition of a saturated m...
Case diagnostics in categorical factor analysis include Mahalanobis distance-based statistics, which...
Robust estimation methods for SEM models that include ordered categorical data are currently availab...
The asymptotically distribution-free (ADF) test statistic depends on very mild distributional assump...
The analysis of ordered response categorical data has received increasing attention in recent years ...
Hypotheses about the relationship among variables in a multiway contingency table may be tested by a...
<p>This study examined the effect of model size on the chi-square test statistics obtained from ordi...
Type I error control and statistical power of four methods of testing group differences on an ordere...
In this paper, ordered categorical variables are used to compare between linear and nonlinear Bayesi...
This thesis consists of four papers that deal with several aspects of the measurement of model fit f...
The use of goodness-of-fit test statistics for discrete or categorical data is widespread throughout...
The feasibility of maximum likelihood (ML) analyses of marginal distributions of repeated categorica...