Several approaches have been proposed for latent class modeling with external variables, including one-step, two-step, and three-step estimators. However, very little is known yet about the performance of these approaches when direct effects of the external variable to the indicators of latent class membership are present. In the current article, we compare those approaches and investigate the consequences of not modeling these direct effects when present, as well as the power of residual and fit statistics to identify such effects. The results of the simulations show that not modeling direct effect can lead to severe parameter bias, especially with a weak measurement model. Both residual and fit statistics can be used to identify such effe...
A latent class signal detection (SDT) model was recently introduced as an alternative to traditional...
Latent class analysis often aims to relate the classes to continuous external consequences (“distal ...
Latent class analysis often aims to relate the classes to continuous external consequences (“distal ...
Several approaches have been proposed for latent class modeling with external variables, including o...
Several approaches have been proposed for latent class modeling with external variables, including o...
The practice of latent class (LC) modeling using a bias-adjusted three-step approach has become wide...
In this article, we present a two-stage estimation approach applied to multilevel latent class analy...
Latent class analysis is used in the political science literature in both substantive applications a...
Latent class methods can be used to identify unobserved subgroups which differ in their observed dat...
We consider models which combine latent class measurement models for categorical latent variables wi...
In this article we provide an overview of existing approaches for relating latent class membership t...
Recently, several bias-adjusted stepwise approaches to latent class modeling with continuous distal ...
Latent class variables are often used to predict outcomes. The conventional practice is to first ass...
Binary data latent class analysis is a form of model-based clustering applied in a wide range of fie...
While latent class (LC) models with distal outcomes are becoming popular in literature as a conseque...
A latent class signal detection (SDT) model was recently introduced as an alternative to traditional...
Latent class analysis often aims to relate the classes to continuous external consequences (“distal ...
Latent class analysis often aims to relate the classes to continuous external consequences (“distal ...
Several approaches have been proposed for latent class modeling with external variables, including o...
Several approaches have been proposed for latent class modeling with external variables, including o...
The practice of latent class (LC) modeling using a bias-adjusted three-step approach has become wide...
In this article, we present a two-stage estimation approach applied to multilevel latent class analy...
Latent class analysis is used in the political science literature in both substantive applications a...
Latent class methods can be used to identify unobserved subgroups which differ in their observed dat...
We consider models which combine latent class measurement models for categorical latent variables wi...
In this article we provide an overview of existing approaches for relating latent class membership t...
Recently, several bias-adjusted stepwise approaches to latent class modeling with continuous distal ...
Latent class variables are often used to predict outcomes. The conventional practice is to first ass...
Binary data latent class analysis is a form of model-based clustering applied in a wide range of fie...
While latent class (LC) models with distal outcomes are becoming popular in literature as a conseque...
A latent class signal detection (SDT) model was recently introduced as an alternative to traditional...
Latent class analysis often aims to relate the classes to continuous external consequences (“distal ...
Latent class analysis often aims to relate the classes to continuous external consequences (“distal ...