Binary data latent class analysis is a form of model-based clustering applied in a wide range of fields. A central assumption of this model is that of conditional independence of responses given latent class membership, often referred to as the “local independence” assumption. The results of latent class analysis may be severely biased when this crucial assumption is violated; investigating the degree to which bivariate relationships between observed variables fit this hypothesis therefore provides vital information. This article evaluates three methods of doing so. The first is the commonly applied method of referring the so-called “bivariate residuals” to a Chi-square distribution. We also introduce two alternative methods that are novel ...
This paper discusses power and sample-size computation for likelihood ratio and Wald testing of the ...
A latent class signal detection (SDT) model was recently introduced as an alternative to traditional...
Latent class models have been recently developed for the joint analysis of a longitudinal quantitati...
Under the assumption of the local independence, latent class analysis can be reduced to a parametric...
We propose a Bayesian latent vector autoregressive (LVAR) model to analyze multivariate longitudinal...
We propose a Bayesian latent vector autoregressive (LVAR) model to analyze multivariate longitudinal...
Local dependence (LD) for binary IRT models can be diagnosed using Chen and Thissen’s bivariate X2 s...
Latent class models are widely used for analyzing correlated binary data. The underlying premise is ...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
It is proposed to enrich the arsenal of methods for the evaluation of local independence within late...
Latent class analysis (LCA) is a widely used technique for detecting unobserved population heterogen...
Latent class analysis (LCA) is a widely used statistical technique for identifying subgroups in the ...
The application of latent class (LC) analysis involves evaluating the LC model using goodness-of-fit...
This paper discusses power and sample-size computation for likelihood ratio and Wald testing of the ...
A latent class signal detection (SDT) model was recently introduced as an alternative to traditional...
Latent class models have been recently developed for the joint analysis of a longitudinal quantitati...
Under the assumption of the local independence, latent class analysis can be reduced to a parametric...
We propose a Bayesian latent vector autoregressive (LVAR) model to analyze multivariate longitudinal...
We propose a Bayesian latent vector autoregressive (LVAR) model to analyze multivariate longitudinal...
Local dependence (LD) for binary IRT models can be diagnosed using Chen and Thissen’s bivariate X2 s...
Latent class models are widely used for analyzing correlated binary data. The underlying premise is ...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
Latent class analysis (LCA) for categorical data is a model-based clustering and classification tech...
It is proposed to enrich the arsenal of methods for the evaluation of local independence within late...
Latent class analysis (LCA) is a widely used technique for detecting unobserved population heterogen...
Latent class analysis (LCA) is a widely used statistical technique for identifying subgroups in the ...
The application of latent class (LC) analysis involves evaluating the LC model using goodness-of-fit...
This paper discusses power and sample-size computation for likelihood ratio and Wald testing of the ...
A latent class signal detection (SDT) model was recently introduced as an alternative to traditional...
Latent class models have been recently developed for the joint analysis of a longitudinal quantitati...