We study the construction of confidence intervals for efficiency levels of individual firms in stochastic frontier models with panel data. The focus is on bootstrapping and related methods. We start with a survey of various versions of the bootstrap. We also propose a simple parametric alternative in which one acts as if the identity of the best firm is known. Monte Carlo simulations indicate that the parametric method works better than the per-centile bootstrap, but not as well as bootstrap methods that make bias corrections. All of these methods are valid only for large time-series sample size (T), and correspondingly none of the methods yields very accurate confidence intervals except when T is large enough that the identity of the best ...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
This paper develops a consistent bootstrap estimation procedure to obtain confidence intervals for n...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
Parametric stochastic frontier models yield firm-level technical efficiency measures based on estima...
Parametric Stochastic Frontier Models are widely used in productivity analysis and are commonly esti...
This paper is an empirical study of the uncertainty associated with estimates from stochastic fronti...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
This thesis is a contribution to frontier analysis and its application to developing areas in Morocc...
The Data Envelopment Analysis method has been extensively used in the literature to provide measures...
The iterated bootstrap may be used to estimate errors which arise from a single pass of the bootstra...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
The Data Envelopment Analysis method has been extensively used in the literature to provide measures...
Estimates of technical inefficiency based on fixed effects estimation of the stochastic frontier mod...
This paper evaluates bootstrap inference methods for quantile regression panel data models. We propo...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
This paper develops a consistent bootstrap estimation procedure to obtain confidence intervals for n...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
Parametric stochastic frontier models yield firm-level technical efficiency measures based on estima...
Parametric Stochastic Frontier Models are widely used in productivity analysis and are commonly esti...
This paper is an empirical study of the uncertainty associated with estimates from stochastic fronti...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
This thesis is a contribution to frontier analysis and its application to developing areas in Morocc...
The Data Envelopment Analysis method has been extensively used in the literature to provide measures...
The iterated bootstrap may be used to estimate errors which arise from a single pass of the bootstra...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
The Data Envelopment Analysis method has been extensively used in the literature to provide measures...
Estimates of technical inefficiency based on fixed effects estimation of the stochastic frontier mod...
This paper evaluates bootstrap inference methods for quantile regression panel data models. We propo...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
This paper develops a consistent bootstrap estimation procedure to obtain confidence intervals for n...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...