We propose a new method to perform approximate likelihood inference in latent variable models. Our approach provides an approximation of the integrals involved in the likelihood function through a reduction of their dimension that makes the computation feasible in situations in which classical and adaptive quadrature based methods are not applicable. We derive new theoretical results on the accuracy of the obtained estimators. We show that the proposed approximation outperforms several existing methods in simulations, and it can be successfully applied in presence of multidimensional longitudinal data when standard techniques are not applicable or feasibl
The calculation of likelihood functions of many econometric models requires the evaluation of integr...
Generalized linear latent variable models (GLLVM) are popular tools for modeling multivariate, corre...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...
We propose a new method to perform approximate likelihood inference in latent variable models. Our a...
none3siLatent variable models represent a useful tool for the analysis of complex data when the cons...
none2noApproximate methods are considered for likelihood inference to longitudinal and multidimensio...
Latent variable models represent a useful tool for the analysis of complex data characterized by the...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
Latent variable models have been widely applied in different fields of research in which the con- st...
AbstractLatent variable models represent a useful tool in different fields of research in which the ...
Dynamic latent variable models represent a useful and flexible tool in the study of macro and micro-...
none2noLatent variable models represent a useful tool in different fields of research in which the c...
none3noneBianconcini S.;Cagnone S.;Rizopoulos D.Bianconcini S.;Cagnone S.;Rizopoulos D
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
Maximum likelihood estimation of dynamic latent variable models requires to solve integrals that are...
The calculation of likelihood functions of many econometric models requires the evaluation of integr...
Generalized linear latent variable models (GLLVM) are popular tools for modeling multivariate, corre...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...
We propose a new method to perform approximate likelihood inference in latent variable models. Our a...
none3siLatent variable models represent a useful tool for the analysis of complex data when the cons...
none2noApproximate methods are considered for likelihood inference to longitudinal and multidimensio...
Latent variable models represent a useful tool for the analysis of complex data characterized by the...
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
Latent variable models have been widely applied in different fields of research in which the con- st...
AbstractLatent variable models represent a useful tool in different fields of research in which the ...
Dynamic latent variable models represent a useful and flexible tool in the study of macro and micro-...
none2noLatent variable models represent a useful tool in different fields of research in which the c...
none3noneBianconcini S.;Cagnone S.;Rizopoulos D.Bianconcini S.;Cagnone S.;Rizopoulos D
Latent variable models for ordinal data represent a useful tool in different fields of research in w...
Maximum likelihood estimation of dynamic latent variable models requires to solve integrals that are...
The calculation of likelihood functions of many econometric models requires the evaluation of integr...
Generalized linear latent variable models (GLLVM) are popular tools for modeling multivariate, corre...
open2noFirst Online: 13 April 2016Maximum likelihood estimation of models based on continuous latent...