Combining Data Envelopment Analysis and Machine Learning
Date
2022-02-20Discipline/s
Ingeniería, Industria y ConstrucciónSubject/s
Data envelopment analysisPAC learning
Support vector regression
Machine learning
Structural risk minimization
Abstract
Data Envelopment Analysis (DEA) is one of the most used non-parametric techniques
for technical efficiency assessment. DEA is exclusively concerned about the minimization of the
empirical error, satisfying, at the same time, some shape constraints (convexity and free disposability).
Unfortunately, by construction, DEA is a descriptive methodology that is not concerned about
preventing overfitting. In this paper, we introduce a new methodology that allows for estimating
polyhedral technologies following the Structural Risk Minimization (SRM) principle. This technique
is called Data Envelopment Analysis-based Machines (DEAM). Given that the new method controls
the generalization error of the model, the corresponding estimate of the technology does not suffer
from overfitting. Moreover, the notion of ε-insensitivity is also introduced, generating a new and
more robust definition of technical efficiency. Additionally, we show that DEAM can be seen as a
machine learning-type exten...





