Template-type: ReDIF-Paper 1.0
Author-Name: Daniel Santín González
Author-Workplace-Name: Departamento de Economía Aplicada, Pública y Política. Universidad Complutense de Madrid.
Author-Workplace-Homepage: https://www.ucm.es/eapp
Author-Name: Aurelia Valiño Castro
Author-Workplace-Name: Departamento de Economía Aplicada, Pública y Política. Universidad Complutense de Madrid.
Author-Workplace-Homepage: https://www.ucm.es/eapp
Title: Comparing neural networks and efficiency techniques in non-linear production functions 
Abstract: Non-linear production functions are common in economic theory and in real life, especially in cases with increasing and 
	diminishing returns to scale but there are also contexts where an increase in one input implies a decrease in one output. The 
	aim of this paper is to test how non-linearity affect estimations of technical efficiency obtained by ordinary and corrected 
	least squares (OLS, COLS), data envelopment analysis with constant and variables returns to scale (DEAcrs, DEAvrs), stochastic 
	frontier analysis (SFA) and by multilayer perceptron neural networks with backpropagation (MLP). To do this we will construct a 
	very simple non-linear one input-one output production function and we will obtain different synthetic data with 50, 100, 200 
	and 300 decision-making units (DMUs). Afterwards we will add up different quantities of noise to the data and finally we will 
	compare real efficiency with estimated values for all techniques named before among the different scenarios. Our results 
	suggest that MLP is a flexible tool to fit production functions and a possible alternative to traditional techniques under 
	non-linear contexts.
Keywords: Análisis funcional no lineal, Non-linear production function, Technical efficiency, Artificial neural networks.
Length: 12 pages
Creation-Date: 2002
Number: 02-02
X-File-Ref: http://america.sim.ucm.es/repec/ucm/ref/doctra02-02.txt
File-URL: https://eprints.ucm.es/id/eprint/6763/1/0202.pdf
File-Format: Application/pdf
Handle: RePEc:ucm:doctra:02-02