The paper analyzes a number of competing approaches to modeling efficiency in panel studies. The specifications considered include the fixed effects stochastic frontier, the random effects stochastic frontier, the Hausman-Taylor random effects stochastic frontier, and the random and fixed effects stochastic frontier with an AR(1) error. I have summarized the foundations and properties of estimators that have appeared elsewhere and have described the model assumptions under which each of the estimators have been developed. I discuss parametric and nonparametric treatments of time varying efficiency including the Battese-Coelli estimator and linear programming approaches to efficiency measurement. Monte Carlo simulation is used to compare the...
This paper proposes a stochastic frontier panel data model which includes time-invariant unobserved ...
The aim of this article is first to review how the standard econometric methods for panel data may b...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...
This paper complements the results of Hausman and Taylor (1981) and Cornwell, Schmidt and Sickles (1...
This study focuses on the semiparametric-efficient estimation of random effect panel models containi...
In recent years a number of alternative methods have been proposed with which to measure technical e...
This paper considers the semiparametric stochastic frontier model with panel data which arises in th...
This paper proposes a panel data based stochastic frontier model which accommodates time-invariant u...
Parametric stochastic frontier models yield firm-level conditional distributions of inefficiency tha...
This paper proposes a stochastic frontier model which includes time-invariant unobserved heterogenei...
In this paper we estimate the frontier and time variant technical efficiency fully nonparametrically...
This article considers the semiparametric stochastic frontier model with panel data that arises in t...
The main objective of the paper is to present a general framework for estimating production frontier...
This thesis is a contribution to frontier analysis and its application to developing areas in Morocc...
This paper introduces a new estimation method for time-varying individual effects in a panel data mo...
This paper proposes a stochastic frontier panel data model which includes time-invariant unobserved ...
The aim of this article is first to review how the standard econometric methods for panel data may b...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...
This paper complements the results of Hausman and Taylor (1981) and Cornwell, Schmidt and Sickles (1...
This study focuses on the semiparametric-efficient estimation of random effect panel models containi...
In recent years a number of alternative methods have been proposed with which to measure technical e...
This paper considers the semiparametric stochastic frontier model with panel data which arises in th...
This paper proposes a panel data based stochastic frontier model which accommodates time-invariant u...
Parametric stochastic frontier models yield firm-level conditional distributions of inefficiency tha...
This paper proposes a stochastic frontier model which includes time-invariant unobserved heterogenei...
In this paper we estimate the frontier and time variant technical efficiency fully nonparametrically...
This article considers the semiparametric stochastic frontier model with panel data that arises in t...
The main objective of the paper is to present a general framework for estimating production frontier...
This thesis is a contribution to frontier analysis and its application to developing areas in Morocc...
This paper introduces a new estimation method for time-varying individual effects in a panel data mo...
This paper proposes a stochastic frontier panel data model which includes time-invariant unobserved ...
The aim of this article is first to review how the standard econometric methods for panel data may b...
In this chapter, we described a Bayesian approach to efficiency analysis using stochastic frontier m...