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Evolutionary Product Unit Logistic Regression: The Case of Agrarian Efficiency

Authors

GARCÍA ALONSO, CARLOS, Hervas-Martinez, Cesar , MILLÁN LARA, SALUD, TORRES JIMÉNEZ, MERCEDES

External publication

No

Means

Lect. Notes Comput. Sci.

Scope

Proceedings Paper

Nature

Científica

JCR Quartile

SJR Quartile

SJR Impact

0.369

Publication date

01/01/2015

ISI

000367709100009

Scopus Id

2-s2.0-84952673352

Abstract

By using a high-variability sample of real agrarian enterprises previously classified into two classes (efficient and inefficient), a comparative study was carried out to demonstrate the classification accuracy of logistic regression algorithms based on evolutionary product-unit neural networks. Data envelopment analysis considering variable returns-to-scale (BBC-DEA) was chosen to classify selected farms (220 olive tree farms in dry farming) as efficient or inefficient by using surveyed socio-economic variables (agrarian year 2000). Once the sample was grouped by BCC-DEA, easy-to-collect descriptive variables (concerning the farm and farmer) were then used as independent variables in order to find a quick and reliable alternative for classifying agrarian enterprises as efficient or inefficient. Results showed that our proposal is very promising for the classification of complex structures (farms).

Keywords

Neural networks; Classification; Product-Unit; Evolutionary algorithms; Agrarian technical efficiency