Nonparametric efficiency estimation in stochastic environments
August 2002
Article
pp 645-655.
This publication is part of collection
| Related Files |
|---|
|
Redirect to Permalink
(Permalink.url.txt, 84 bytes) |
Repository contains one additional file which is not publicly available
This paper develops a new nonparametric model for efficiency estimation. In contrast to Data Envelopment Analysis (DEA), it does not impose debatable production assumptions like free disposability and convexity, and it does not assume that the data are measured without error. The estimators are asymptotically unbiased and have an asymptotic variance that is comparable to that of stochastic frontier estimators (provided the latter use a correct specification of the functional form for the production relationships). In addition, the estimators can be computed using a simple enumeration algorithm.
Keywords
- algorithms
- stochastic analysis
- data envelopment analysis
- nonparametric efficiency analysis
- Input-output analysis.
- error
- industrial efficiency
- convex domains