This paper provides a simple, tractable bootstrap for use with Data Envelopment Analysis (DEA) estimators in nonparametric frontier models. It is well-known that a naive bootstrap yields inconsistent inference in this context. However, subsampling — where for a sample of size n bootstrap pseudo-samples of size m < n are drawn from the empirical distribution of pairs of observed input-output vectors — provides consistent inference, although coverages are quite sensitive to the choice of subsample size m. We show that a simple, data-based rule for selecting m gives confidence interval estimates with good coverage properties. In addition, we show that subsampling performs well for testing hypotheses about returns to scale and other features of ...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Subsampling and the m out of n bootstrap have been suggested in the literature as methods for carryi...
It is well-known that the naive bootstrap yields inconsistent inference in the context of data envel...
Nonparametric data envelopment analysis (DEA) estimators based on linear programming methods have be...
Non-parametric data envelopment analysis (DEA) estimators based on linear pro-gramming methods have ...
Non-parametric data envelopment analysis (DEA) estimators based on linear programming methods have b...
Non-parametric data envelopment analysis (DEA) estimators based on linear program-ming methods have ...
Efficiency scores of firms are measured by their distance to an estimated production frontier. The e...
We develop a tractable, consistent bootstrap algorithm for inference about Farrell–Debreu efficiency...
This chapter recasts the parametric and statistical approach of Chapter 2, and the nonparametric and...
abstract The Data Envelopment Analysis method has been extensively used in the literature to provide...
We develop a tractable, consistent bootstrap algorithm for inference about Farrell-Debreu efficiency...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Data Envelopment Analysis (DEA), provides an empirical estimation of the production frontier, based ...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Subsampling and the m out of n bootstrap have been suggested in the literature as methods for carryi...
It is well-known that the naive bootstrap yields inconsistent inference in the context of data envel...
Nonparametric data envelopment analysis (DEA) estimators based on linear programming methods have be...
Non-parametric data envelopment analysis (DEA) estimators based on linear pro-gramming methods have ...
Non-parametric data envelopment analysis (DEA) estimators based on linear programming methods have b...
Non-parametric data envelopment analysis (DEA) estimators based on linear program-ming methods have ...
Efficiency scores of firms are measured by their distance to an estimated production frontier. The e...
We develop a tractable, consistent bootstrap algorithm for inference about Farrell–Debreu efficiency...
This chapter recasts the parametric and statistical approach of Chapter 2, and the nonparametric and...
abstract The Data Envelopment Analysis method has been extensively used in the literature to provide...
We develop a tractable, consistent bootstrap algorithm for inference about Farrell-Debreu efficiency...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Data Envelopment Analysis (DEA), provides an empirical estimation of the production frontier, based ...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Conventional approaches for inference about efficiency in parametric stochastic frontier (PSF) model...
Subsampling and the m out of n bootstrap have been suggested in the literature as methods for carryi...