This paper is concerned with the problem of estimating the demand for health care with panel data. A random effects model is specifed in a semiparametric Bayesian fashion using a Dirichlet process prior. This results in a very exible mixture distribution with an in nite number of components for the random effects. Therefore, the model can be seen as a natural extension of prevailing latent class models. A full Bayesian analysis using Markov chain Monte Carlo (MCMC)simulation methods is discussed. The methodology is illustrated with an application using data from Germany
The Bayesian approach to statistics has been growing rapidly in popularity as an alternative to the ...
Currently, there appears to be a tradeoff between the performance of a semiparametric estimator in f...
The purpose of this dissertation is to analyze three models in medicine and finance using Bayesian i...
This dissertation consists of three chapters on semi-parametric Bayesian Econometric methods. Chapte...
In this paper, we analyse two frequently used measures of the demand for health care, namely hospita...
This dissertation explores the estimation of endogenous treatment effects in the presence of heterog...
We review recent likelihood-based approaches to modeling demand for medical care. A semi-nonparametr...
All developed countries are facing the problem of providing affordable and high quality healthcare i...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in ...
This paper reports on the findings from the application of a recently reported approach to modelling...
A Bayesian method of estimating multivariate sample selection models is introduced and applied to th...
In many biomedical studies, the observed data may violate the assumptions of standard parametric met...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This paper explores different approaches to econometric modelling of count measures of health care u...
The Bayesian approach to statistics has been growing rapidly in popularity as an alternative to the ...
Currently, there appears to be a tradeoff between the performance of a semiparametric estimator in f...
The purpose of this dissertation is to analyze three models in medicine and finance using Bayesian i...
This dissertation consists of three chapters on semi-parametric Bayesian Econometric methods. Chapte...
In this paper, we analyse two frequently used measures of the demand for health care, namely hospita...
This dissertation explores the estimation of endogenous treatment effects in the presence of heterog...
We review recent likelihood-based approaches to modeling demand for medical care. A semi-nonparametr...
All developed countries are facing the problem of providing affordable and high quality healthcare i...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in ...
This paper reports on the findings from the application of a recently reported approach to modelling...
A Bayesian method of estimating multivariate sample selection models is introduced and applied to th...
In many biomedical studies, the observed data may violate the assumptions of standard parametric met...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This body of work develops new Bayesian nonparametric (BNP) models for estimating causal effects wit...
This paper explores different approaches to econometric modelling of count measures of health care u...
The Bayesian approach to statistics has been growing rapidly in popularity as an alternative to the ...
Currently, there appears to be a tradeoff between the performance of a semiparametric estimator in f...
The purpose of this dissertation is to analyze three models in medicine and finance using Bayesian i...