Latent Markov models with covariates can be estimated via 1-step maximum likelihood. However, this 1-step approach has various disadvantages, such as that the inclusion of covariates in the model might alter the formation of the latent states and that parameter estimation could become infeasible with large numbers of time points, responses, and covariates. This is why researchers typically prefer performing the analysis in a stepwise manner; that is, they first construct the measurement model, then obtain the latent state classifications, and subsequently study the relationship between covariates and latent state memberships. However, such a stepwise approach yields downward-biased estimates of the covariate effects on initial state and tra...
We propose a two-step estimator for multilevel latent class analysis (LCA) with covariates. The meas...
"Preface Latent Markov models represent an important class of latent variable models for the analysi...
In this article we develop a latent class model with class probabilities that depend on subject-spec...
Latent Markov models with covariates can be estimated via 1-step maximum likelihood. However, this 1...
Latent Markov models with covariates can be estimated via 1-step maximum likelihood. However, this 1...
We provide a comprehensive overview of latent Markov (LM) models for the analysis of longitudinal da...
Invariance of the measurement model (MM) between subjects and within subjects over time is a prerequ...
Invariance of the measurement model (MM) between subjects and within subjects over time is a prerequ...
Mixture modelling is a commonly used technique for describing longitudinal patterns of change, often...
This article describes the general time-intensive longitudinal latent class modeling framework imple...
Researchers using latent class (LC) analysis often proceed using the following three steps: (1) an L...
We propose a two-step estimator for multilevel latent class analysis (LCA) with covariates. The meas...
This paper proposes a two-step maximum likelihood estimation (MLE) procedure to deal with the proble...
In this paper we head for a fully Bayesian analysis of the latent class model with a priori unknown ...
For a class of latent Markov models for discrete variables having a longitudinal structure, we intro...
We propose a two-step estimator for multilevel latent class analysis (LCA) with covariates. The meas...
"Preface Latent Markov models represent an important class of latent variable models for the analysi...
In this article we develop a latent class model with class probabilities that depend on subject-spec...
Latent Markov models with covariates can be estimated via 1-step maximum likelihood. However, this 1...
Latent Markov models with covariates can be estimated via 1-step maximum likelihood. However, this 1...
We provide a comprehensive overview of latent Markov (LM) models for the analysis of longitudinal da...
Invariance of the measurement model (MM) between subjects and within subjects over time is a prerequ...
Invariance of the measurement model (MM) between subjects and within subjects over time is a prerequ...
Mixture modelling is a commonly used technique for describing longitudinal patterns of change, often...
This article describes the general time-intensive longitudinal latent class modeling framework imple...
Researchers using latent class (LC) analysis often proceed using the following three steps: (1) an L...
We propose a two-step estimator for multilevel latent class analysis (LCA) with covariates. The meas...
This paper proposes a two-step maximum likelihood estimation (MLE) procedure to deal with the proble...
In this paper we head for a fully Bayesian analysis of the latent class model with a priori unknown ...
For a class of latent Markov models for discrete variables having a longitudinal structure, we intro...
We propose a two-step estimator for multilevel latent class analysis (LCA) with covariates. The meas...
"Preface Latent Markov models represent an important class of latent variable models for the analysi...
In this article we develop a latent class model with class probabilities that depend on subject-spec...