This paper addresses the problem of estimating the monotone boundary of a nonconvex set in a full nonparametric and multivariate setup. This is particularly useful in the context of productivity analysis where the efficient frontier is the locus of optimal production scenarios. Then efficiency scores are defined by the distance of a firm from this efficient boundary. In this setup, the free disposal hull (FDH) estimator has been extensively used due to its flexibility and because it allows nonconvex attainable production sets. However, the nonsmoothness and discontinuities of the FDH is a drawback for conducting inference in finite samples. In particular, it is shown that the bootstrap of the FDH has poor performances and so is not useful i...
We propose an improvement of the finite sample approximation of the central limit theorems (CLTs) th...
A large amount of literature has been developed on how to specify and to estimate production frontie...
This chapter recasts the parametric and statistical approach of Chapter 2, and the nonparametric and...
This paper address the problem of estimating the monotone boundary of a nonconvex set in a full nonp...
AbstractThis paper addresses the problem of estimating the monotone boundary of a nonconvex set in a...
In efficiency analysis, the production frontier is defined as the set of the most efficient alternat...
A large amount of literature has been developed on how to estimate frontier functions. The idea is t...
The Free Disposal Hull (FDH) is a nonparametric estimator for the production set. In Productivity An...
Most nonparametric methods for estimating production frontiers (data envelopment analysis and free d...
We propose an improvement of the finite sample approximation of the central limit theorems (CLTs) th...
It is well-known that the naive bootstrap yields inconsistent inference in the context of data envel...
In this paper we extend the work of Simar (J Product Ananl 28:183–201, 2007) introducing noise in no...
When analyzing the productivity of firms, one may want to compare how the firms transform a set of i...
Efficiency scores of firms are measured by their distance to an estimated production frontier. The e...
When analyzing the productivity of firms, one may want to compare how the firms transform a set of i...
We propose an improvement of the finite sample approximation of the central limit theorems (CLTs) th...
A large amount of literature has been developed on how to specify and to estimate production frontie...
This chapter recasts the parametric and statistical approach of Chapter 2, and the nonparametric and...
This paper address the problem of estimating the monotone boundary of a nonconvex set in a full nonp...
AbstractThis paper addresses the problem of estimating the monotone boundary of a nonconvex set in a...
In efficiency analysis, the production frontier is defined as the set of the most efficient alternat...
A large amount of literature has been developed on how to estimate frontier functions. The idea is t...
The Free Disposal Hull (FDH) is a nonparametric estimator for the production set. In Productivity An...
Most nonparametric methods for estimating production frontiers (data envelopment analysis and free d...
We propose an improvement of the finite sample approximation of the central limit theorems (CLTs) th...
It is well-known that the naive bootstrap yields inconsistent inference in the context of data envel...
In this paper we extend the work of Simar (J Product Ananl 28:183–201, 2007) introducing noise in no...
When analyzing the productivity of firms, one may want to compare how the firms transform a set of i...
Efficiency scores of firms are measured by their distance to an estimated production frontier. The e...
When analyzing the productivity of firms, one may want to compare how the firms transform a set of i...
We propose an improvement of the finite sample approximation of the central limit theorems (CLTs) th...
A large amount of literature has been developed on how to specify and to estimate production frontie...
This chapter recasts the parametric and statistical approach of Chapter 2, and the nonparametric and...