Maximum likelihood estimation of dynamic latent variable models requires to solve integrals that are not analytically tractable. Numerical approximations represent a possible solution to this problem. We propose to use the Adaptive Gaussian-Hermite (AGH) numerical quadrature approximation for a class of dynamic latent variable models for time-series and panel data. These models are based on continuous time-varying latent variables which follow an autoregressive process of order 1, AR(1). Two examples of such models are the stochastic volatility models for the analysis of financial time-series and the limited dependent variable models for the analysis of panel data. A comparison between the performance of AGH methods and alternative approxi...
none2noApproximate methods are considered for likelihood inference to longitudinal and multidimensio...
AbstractLatent variable models represent a useful tool in different fields of research in which the ...
Helped by cheaper data computation, companies make more use of sophisticated statistical analysis in...
Maximum likelihood estimation of dynamic latent variable models requires to solve integrals that are...
Dynamic latent variable models represent a useful and flexible tool in the study of macro and micro-...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...
The paper proposes a comparison between dynamic models with continuous and discrete latent variables...
Latent variable models have been widely applied in different fields of research in which the con- st...
We propose a new method to perform approximate likelihood inference in latent variable models. Our a...
Latent variable models have been widely applied in different fields of research in which the constru...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
Latent variable models for categorical data represent a useful tool for a consistent assessment of t...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
Generalized Linear Latent Variable Models (GLLVM), as defined in Bartholomew and Knott (1999), enabl...
Recently, Fridman and Harris proposed a method which allows one to approximate the likelihood of the...
none2noApproximate methods are considered for likelihood inference to longitudinal and multidimensio...
AbstractLatent variable models represent a useful tool in different fields of research in which the ...
Helped by cheaper data computation, companies make more use of sophisticated statistical analysis in...
Maximum likelihood estimation of dynamic latent variable models requires to solve integrals that are...
Dynamic latent variable models represent a useful and flexible tool in the study of macro and micro-...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...
The paper proposes a comparison between dynamic models with continuous and discrete latent variables...
Latent variable models have been widely applied in different fields of research in which the con- st...
We propose a new method to perform approximate likelihood inference in latent variable models. Our a...
Latent variable models have been widely applied in different fields of research in which the constru...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
Latent variable models for categorical data represent a useful tool for a consistent assessment of t...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
Generalized Linear Latent Variable Models (GLLVM), as defined in Bartholomew and Knott (1999), enabl...
Recently, Fridman and Harris proposed a method which allows one to approximate the likelihood of the...
none2noApproximate methods are considered for likelihood inference to longitudinal and multidimensio...
AbstractLatent variable models represent a useful tool in different fields of research in which the ...
Helped by cheaper data computation, companies make more use of sophisticated statistical analysis in...