Latent class is a method for classifying subjects, originally based on binary outcome data but now extended to other data types. A major difficulty with the use of latent class models is the presence of heterogeneity of the outcome probabilities within the true classes, which violates the assumption of conditional independence, and will require a large number of classes to model the association in the data resulting in difficulties in interpretation. A solution is to include a normally distributed subject level random effect in the model so that the outcomes are now conditionally independent given both the class and random effect. A further extension is to incorporate an additional period level random effect when subjects are observed over ...
An extension of latent class (LC) and finite mixture models is described for the analysis of hierarc...
Presents various methods for accommodating model uncertainty in random effects and latent variable m...
This Monte Carlo simulation study assessed the degree of classification success associated with resu...
Latent class is a method for classifying subjects, originally based on binary outcome data but now e...
The BayesLCA package for R provides tools for performing latent class analysis within a Bayesian set...
The BayesLCA package for R provides tools for performing latent class analysis within a Bayesian set...
Latent class analysis (LCA) and latent class regression (LCR) are widely used for modeling multivari...
poLCA is a software package for the estimation of latent class and latent class regression models fo...
Following are two examples of using randomLCA for latent class analysis. Some aspects will certainly...
Random effects have become a standard concept in statistical modelling over the last decades. They ...
An extension of latent class (LC) and finite mixture models is described for the analysis of hierarc...
poLCA is a software package for the estimation of latent class and latent class regres-sion models f...
Latent class analysis (LCA) is a statistical method used to group individuals (cases, units) into cl...
Latent class analysis is a popular statistical technique for estimating disease prevalence and test ...
In the last decade, several attempts have been made to relate item respunse theory (IRT) models to l...
An extension of latent class (LC) and finite mixture models is described for the analysis of hierarc...
Presents various methods for accommodating model uncertainty in random effects and latent variable m...
This Monte Carlo simulation study assessed the degree of classification success associated with resu...
Latent class is a method for classifying subjects, originally based on binary outcome data but now e...
The BayesLCA package for R provides tools for performing latent class analysis within a Bayesian set...
The BayesLCA package for R provides tools for performing latent class analysis within a Bayesian set...
Latent class analysis (LCA) and latent class regression (LCR) are widely used for modeling multivari...
poLCA is a software package for the estimation of latent class and latent class regression models fo...
Following are two examples of using randomLCA for latent class analysis. Some aspects will certainly...
Random effects have become a standard concept in statistical modelling over the last decades. They ...
An extension of latent class (LC) and finite mixture models is described for the analysis of hierarc...
poLCA is a software package for the estimation of latent class and latent class regres-sion models f...
Latent class analysis (LCA) is a statistical method used to group individuals (cases, units) into cl...
Latent class analysis is a popular statistical technique for estimating disease prevalence and test ...
In the last decade, several attempts have been made to relate item respunse theory (IRT) models to l...
An extension of latent class (LC) and finite mixture models is described for the analysis of hierarc...
Presents various methods for accommodating model uncertainty in random effects and latent variable m...
This Monte Carlo simulation study assessed the degree of classification success associated with resu...