A Bayesian approach to estimation, prediction and model comparison in composed error production models is presented. A broad range of distributions on the inefficiency term define the contending models, which can either be treated separately or pooled. Posterior results are derived for the individual efficiencies as well as for the parameters, and the differences with the usual sampling-theory approach are highlighted. The required numerical integrations are handled by Monte Carlo methods with Importance Sampling, and an empirical example illustrates the procedures
The paper proposes a stochastic frontier model with random coefficients to separate technical ineffi...
We use the concept of coarsened posteriors to provide robust Bayesian inference via coarsening in or...
The issues of functional form, distributions of the error components, and endogeneity are for the mo...
A Bayesian approach to estimation, prediction and model comparison in composed error production mode...
In this paper, the finite sample properties of the maximum likelihood and Bayesian esti...
Estimation of the one sided error component in stochastic frontier models may erroneously attribute ...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...
In this paper we describe the use of Gibbs sampling methods for making posterior inferences in stoch...
This study seeks to analyse some important questions related to the Stochastic Frontier Model, such...
In this paper we propose a semiparametric Bayesian framework for the analysis of stochastic frontier...
In this paper we describe the use of Gibbs sampling methods for drawing posterior inferences in a mo...
The purpose of the paper is to propose microfoundations for stochastic frontier models. Previous wor...
In this paper, we generalize the stochastic frontier model to allow for heterogeneous technologies a...
In this paper we propose a semiparametric Bayesian framework for the analysis of stochastic frontier...
The paper proposes a stochastic frontier model with random coefficients to separate technical ineffi...
We use the concept of coarsened posteriors to provide robust Bayesian inference via coarsening in or...
The issues of functional form, distributions of the error components, and endogeneity are for the mo...
A Bayesian approach to estimation, prediction and model comparison in composed error production mode...
In this paper, the finite sample properties of the maximum likelihood and Bayesian esti...
Estimation of the one sided error component in stochastic frontier models may erroneously attribute ...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...
In this paper we describe the use of Gibbs sampling methods for making posterior inferences in stoch...
This study seeks to analyse some important questions related to the Stochastic Frontier Model, such...
In this paper we propose a semiparametric Bayesian framework for the analysis of stochastic frontier...
In this paper we describe the use of Gibbs sampling methods for drawing posterior inferences in a mo...
The purpose of the paper is to propose microfoundations for stochastic frontier models. Previous wor...
In this paper, we generalize the stochastic frontier model to allow for heterogeneous technologies a...
In this paper we propose a semiparametric Bayesian framework for the analysis of stochastic frontier...
The paper proposes a stochastic frontier model with random coefficients to separate technical ineffi...
We use the concept of coarsened posteriors to provide robust Bayesian inference via coarsening in or...
The issues of functional form, distributions of the error components, and endogeneity are for the mo...