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Modelling empirical data to support project cost estimating: neural networks versus traditional methods

Zoran Vojinovic (School of Engineering, University of Auckland, New Zealand)
Vojislav Kecman (School of Engineering, University of Auckland, New Zealand)

Construction Innovation

ISSN: 1471-4175

Article publication date: 1 December 2001

528

Abstract

In this paper we are presenting our research findings on how effective neural networks are at forecasting and estimating preliminary project costs. We have shown that neural networks completely outperform traditional techniques in such tasks. In exploring nonlinear techniques almost all of the current research involves neural network techniques, especially multilayer perceptron (MLP) models and other statistical techniques and few authors have considered radial basis function neural network (RBF NN) models in their research. For this purpose we have developed RBF NN models to represent nonlinear static and dynamic processes and compared their performance with traditional methods. The traditional methods applied in this paper are multiple linear regression (MLR) and autoregressive moving average models with eXogenous input (ARMAX). The performance of these and RBF neural network and traditional models is tested on common data sets and their results are presented.

Keywords

Citation

Vojinovic, Z. and Kecman, V. (2001), "Modelling empirical data to support project cost estimating: neural networks versus traditional methods", Construction Innovation, Vol. 1 No. 4, pp. 227-243. https://doi.org/10.1108/14714170110814622

Publisher

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MCB UP Ltd

Copyright © 2001, MCB UP Limited

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