Latent variable models have been widely applied in different fields of research in which the con- structs of interest are not directly observable, so that one or more latent variables are required to reduce the complexity of the data. In these cases, problems related to the integration of the likelihood function of the model arise since analytical solutions do not exist. In the recent litera- ture, a numerical technique that has been extensively applied to estimate latent variable models is the adaptive Gauss-Hermite quadrature. It provides a good approximation of the integral, and it is more feasible than classical numerical techniques in presence of many latent variables and/or random effects. In this paper, we formally investigate the pr...
Gauss-Hermite quadrature is often used to evaluate and maximize the likelihood for random component ...
In this thesis methods are developed for estimation of latent variable models. In particular nonline...
Generalized Linear Latent Variable Models (GLLVM), as defined in Bartholomew and Knott (1999) allow ...
Latent variable models have been widely applied in different fields of research in which the con- st...
Latent variable models have been widely applied in different fields of research in which the constru...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...
Dynamic latent variable models represent a useful and flexible tool in the study of macro and micro-...
We propose a new method to perform approximate likelihood inference in latent variable models. Our a...
Maximum likelihood estimation of dynamic latent variable models requires to solve integrals that are...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
none2noLatent variable models represent a useful tool in different fields of research in which the c...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
AbstractLatent variable models represent a useful tool in different fields of research in which the ...
Latent variable models for categorical data represent a useful tool for a consistent assessment of t...
Gauss-Hermite quadrature is often used to evaluate and maximize the likelihood for random component ...
In this thesis methods are developed for estimation of latent variable models. In particular nonline...
Generalized Linear Latent Variable Models (GLLVM), as defined in Bartholomew and Knott (1999) allow ...
Latent variable models have been widely applied in different fields of research in which the con- st...
Latent variable models have been widely applied in different fields of research in which the constru...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...
Dynamic latent variable models represent a useful and flexible tool in the study of macro and micro-...
We propose a new method to perform approximate likelihood inference in latent variable models. Our a...
Maximum likelihood estimation of dynamic latent variable models requires to solve integrals that are...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
none2noLatent variable models represent a useful tool in different fields of research in which the c...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
AbstractLatent variable models represent a useful tool in different fields of research in which the ...
Latent variable models for categorical data represent a useful tool for a consistent assessment of t...
Gauss-Hermite quadrature is often used to evaluate and maximize the likelihood for random component ...
In this thesis methods are developed for estimation of latent variable models. In particular nonline...
Generalized Linear Latent Variable Models (GLLVM), as defined in Bartholomew and Knott (1999) allow ...