Markov chain Monte Carlo (MCMC) methods have become a ubiquitous tool in Bayesian analysis. This paper implements MCMC methods for Bayesian analysis of stochastic frontier models using the WinBUGS package, a freely available software. General code for cross-sectional and panel data are presented and various ways of summarizing posterior inference are discussed. Several examples illustrate that analyses with models of genuine practical interest can be performed straightforwardly and model changes are easily implemented. Although WinBUGS may not be that efficient for more complicated models, it does make Bayesian inference with stochastic frontier models easily accessible for applied researchers and its generic structure allows for a lot of f...
This thesis endeavors to study the Bayesian technique of making inferences, which was assisted by th...
In this paper, the finite sample properties of the maximum likelihood and Bayesian esti...
WinBUGS is a fully extensible modular framework for constructing and analysing Bayesian full probabi...
Markov chain Monte Carlo (MCMC) methods have become a ubiquitous tool in Bayesian analysis. This pap...
Markov chain Monte Carlo (MCMC) methods have become a ubiquitous tool in Bayesian analysis. This pap...
The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian theory an...
A hands-on introduction to the principles of Bayesian modeling using WinBUGS Bayesian Modeling Using...
Abstract The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian ...
In this paper we describe the use of modern numerical integration methods for making posterior infer...
The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian theory an...
This paper was presented at the EURING 2007 Technical Meeting, January 14-21, Dunedin, New Zealand. ...
Bayesian statistic methods are facing a rapidly growing level of interest and acceptance in the fiel...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...
This paper reviews the way statisticians use Markov Chain Monte Carlo (MCMC) methods. These techniq...
Bayesian paradigm offers a conceptually simple and coherent system of statistical inference based on...
This thesis endeavors to study the Bayesian technique of making inferences, which was assisted by th...
In this paper, the finite sample properties of the maximum likelihood and Bayesian esti...
WinBUGS is a fully extensible modular framework for constructing and analysing Bayesian full probabi...
Markov chain Monte Carlo (MCMC) methods have become a ubiquitous tool in Bayesian analysis. This pap...
Markov chain Monte Carlo (MCMC) methods have become a ubiquitous tool in Bayesian analysis. This pap...
The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian theory an...
A hands-on introduction to the principles of Bayesian modeling using WinBUGS Bayesian Modeling Using...
Abstract The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian ...
In this paper we describe the use of modern numerical integration methods for making posterior infer...
The computer package WinBUGS is introduced. We first give a brief introduction to Bayesian theory an...
This paper was presented at the EURING 2007 Technical Meeting, January 14-21, Dunedin, New Zealand. ...
Bayesian statistic methods are facing a rapidly growing level of interest and acceptance in the fiel...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...
This paper reviews the way statisticians use Markov Chain Monte Carlo (MCMC) methods. These techniq...
Bayesian paradigm offers a conceptually simple and coherent system of statistical inference based on...
This thesis endeavors to study the Bayesian technique of making inferences, which was assisted by th...
In this paper, the finite sample properties of the maximum likelihood and Bayesian esti...
WinBUGS is a fully extensible modular framework for constructing and analysing Bayesian full probabi...