Latent class analysis (LCA) is a widely used technique for detecting unobserved population heterogeneity in cross-sectional data. Despite its popularity, the performance of LCA is not well understood. In this study, we evaluate the performance of LCA with binary data by examining classification accuracy, parameter estimation accuracy, and coverage rates of confidence intervals (CIs) through Monte Carlo simulation studies. We address the issue of label switching with a distance-based relabeling approach and introduce an index to measure separation among latent classes. Our results show that classification accuracy, parameter estimation accuracy, and CI coverage rates are primarily influenced by class separation and the number of indicators u...
Diagnostic classification models (DCMs) may suffer from the latent class label switching issue. Labe...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
Mixture models can be used for explanation or individual prediction and classification. In practice,...
Traditional latent class analysis (LCA) considers entropy R2 as the only measure of effect size. How...
This Monte Carlo simulation study examined the performance of the most commonly used fit indices in ...
The purpose of this study was to examine in which way adding more indicators or a covariate influenc...
Latent class analysis (LCA) is a widely used statistical technique for identifying subgroups in the ...
This simulation study examines the performance of fit indices commonly used by applied researchers i...
This Monte Carlo simulation study assessed the degree of classification success associated with resu...
AbstractObjectivesLatent class methods are increasingly being used in analysis of developmental traj...
Latent transition analysis (LTA) is a mixture modeling approach that is gaining popularity in social...
The application of latent class (LC) analysis involves evaluating the LC model using goodness-of-fit...
Mixture modeling is a widely applied data analysis technique used to identify unobserved heterogenei...
Binary data latent class analysis is a form of model-based clustering applied in a wide range of fie...
Latent class variables are often used to predict outcomes. The conventional practice is to first ass...
Diagnostic classification models (DCMs) may suffer from the latent class label switching issue. Labe...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
Mixture models can be used for explanation or individual prediction and classification. In practice,...
Traditional latent class analysis (LCA) considers entropy R2 as the only measure of effect size. How...
This Monte Carlo simulation study examined the performance of the most commonly used fit indices in ...
The purpose of this study was to examine in which way adding more indicators or a covariate influenc...
Latent class analysis (LCA) is a widely used statistical technique for identifying subgroups in the ...
This simulation study examines the performance of fit indices commonly used by applied researchers i...
This Monte Carlo simulation study assessed the degree of classification success associated with resu...
AbstractObjectivesLatent class methods are increasingly being used in analysis of developmental traj...
Latent transition analysis (LTA) is a mixture modeling approach that is gaining popularity in social...
The application of latent class (LC) analysis involves evaluating the LC model using goodness-of-fit...
Mixture modeling is a widely applied data analysis technique used to identify unobserved heterogenei...
Binary data latent class analysis is a form of model-based clustering applied in a wide range of fie...
Latent class variables are often used to predict outcomes. The conventional practice is to first ass...
Diagnostic classification models (DCMs) may suffer from the latent class label switching issue. Labe...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
Mixture models can be used for explanation or individual prediction and classification. In practice,...