This article examines the problem of specification error in 2 models for categorical latent variables; the latent class model and the latent Markov model. Specification error in the latent class model focuses on the impact of incorrectly specifying the number of latent classes of the categorical latent variable on measures of model adequacy as well as sample reallocation to latent classes. The results show that the clarity of remaining latent classes, as measured by the entropy statistic depends on the number of observations in the omitted latent class—but this statistic is not reliable. Specification error in the latent Markov model focuses on the transition probabilities when a longitudinal Guttman process is incorrectly specified. The fi...
This paper shows that econometric models that include categorical variables are not invariant to cho...
Latent class models are now widely applied in health economics to analyse heterogeneity in multiple ...
Latent variable modelling has gradually become an integral part of mainstream statistics and is curr...
"Preface Latent Markov models represent an important class of latent variable models for the analysi...
We study the properties of a three-step approach to estimating the parameters of a latent structure ...
The latent variable model is a useful tool for longitudinal/multivariate data analysis. It not only ...
This article deals with the latent class analysis of models with error of measurement. If the latent...
A comparison of incomplete-data methods for categorical data Daniël W van der Palm, L Andries van d...
In this chapter, we use a model-based approach to adjusting observed gross flows for correlated clas...
This article describes the general time-intensive longitudinal latent class modeling framework imple...
Latent class analysis is used in the political science literature in both substantive applications a...
We studied four methods for handling incomplete categorical data in statistical modeling: (1) maximu...
This series of simulation studies was designed to assess the impact of misspecifications of the late...
The naive Bayes model makes the often unrealistic assumption that the feature variables are mutually...
Latent class analysis is a fairly advanced statistical topic that may be viewed as a part of categor...
This paper shows that econometric models that include categorical variables are not invariant to cho...
Latent class models are now widely applied in health economics to analyse heterogeneity in multiple ...
Latent variable modelling has gradually become an integral part of mainstream statistics and is curr...
"Preface Latent Markov models represent an important class of latent variable models for the analysi...
We study the properties of a three-step approach to estimating the parameters of a latent structure ...
The latent variable model is a useful tool for longitudinal/multivariate data analysis. It not only ...
This article deals with the latent class analysis of models with error of measurement. If the latent...
A comparison of incomplete-data methods for categorical data Daniël W van der Palm, L Andries van d...
In this chapter, we use a model-based approach to adjusting observed gross flows for correlated clas...
This article describes the general time-intensive longitudinal latent class modeling framework imple...
Latent class analysis is used in the political science literature in both substantive applications a...
We studied four methods for handling incomplete categorical data in statistical modeling: (1) maximu...
This series of simulation studies was designed to assess the impact of misspecifications of the late...
The naive Bayes model makes the often unrealistic assumption that the feature variables are mutually...
Latent class analysis is a fairly advanced statistical topic that may be viewed as a part of categor...
This paper shows that econometric models that include categorical variables are not invariant to cho...
Latent class models are now widely applied in health economics to analyse heterogeneity in multiple ...
Latent variable modelling has gradually become an integral part of mainstream statistics and is curr...