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Computing gradient-based stepwise benchmarking paths

Author:
Lozano Segura, Sebastián; Calzada Infante, LauraUniovi authority
Publication date:
2018
Editorial:

Elsevier

Publisher version:
https://doi.org/10.1016/j.omega.2017.11.002
Citación:
Omega, p. 1-13 (2017); doi:10.1016/j.omega.2017.11.002
Descripción física:
p. 1-13
Abstract:

In this paper, a new stepwise benchmarking approach is presented. It is based on the concept of effi-ciency field potential given by a continuous and differentiable function that decreases monotonously as the amount of inputs consumed is reduced and the amount of outputs produced is increased. A gradientbased stepwise efficiency improvement method is proposed and the graphical interpretation of the continuous gradient-based trajectories is shown. A minimum potential DEA model is also formulated. The proposed approach is units invariant and can take into account preference structure, non-discretionary variables and undesirable outputs. The proposed method has been applied to an organic farming dataset

In this paper, a new stepwise benchmarking approach is presented. It is based on the concept of effi-ciency field potential given by a continuous and differentiable function that decreases monotonously as the amount of inputs consumed is reduced and the amount of outputs produced is increased. A gradientbased stepwise efficiency improvement method is proposed and the graphical interpretation of the continuous gradient-based trajectories is shown. A minimum potential DEA model is also formulated. The proposed approach is units invariant and can take into account preference structure, non-discretionary variables and undesirable outputs. The proposed method has been applied to an organic farming dataset

Description:

Belarmino Adenso García Fernández es el investigador principal del proyecto "Análisis y diseño de redes logísticas eficientes, robustas y sostenibles"

URI:
http://hdl.handle.net/10651/44531
ISSN:
0305-0483
DOI:
10.1016/j.omega.2017.11.002
Patrocinado por:

This research was carried out with the financial support of the Spanish Ministry of Science and the European Regional DevelopmentFund (ERDF), grant DPI2013-41469-P.

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