Decision support system for contractor pre-qualification : artificial neural network model


Autoria(s): Lam, K.C.; Ng, S.T.; Hu, T.; Skitmore, Martin
Data(s)

2000

Resumo

The selection criteria for contractor pre-qualification are characterized by the co-existence of both quantitative and qualitative data. The qualitative data is non-linear, uncertain and imprecise. An ideal decision support system for contractor pre-qualification should have the ability of handling both quantitative and qualitative data, and of mapping the complicated nonlinear relationship of the selection criteria, such that rational and consistent decisions can be made. In this research paper, an artificial neural network model was developed to assist public clients identifying suitable contractors for tendering. The pre-qualification criteria (variables) were identified for the model. One hundred and twelve real pre-qualification cases were collected from civil engineering projects in Hong Kong, and eighty-eight hypothetical pre-qualification cases were also generated according to the “If-then” rules used by professionals in the pre-qualification process. The results of the analysis totally comply with current practice (public developers in Hong Kong). Each pre-qualification case consisted of input ratings for candidate contractors’ attributes and their corresponding pre-qualification decisions. The training of the neural network model was accomplished by using the developed program, in which a conjugate gradient descent algorithm was incorporated for improving the learning performance of the network. Cross-validation was applied to estimate the generalization errors based on the “re-sampling” of training pairs. The case studies show that the artificial neural network model is suitable for mapping the complicated nonlinear relationship between contractors’ attributes and their corresponding pre-qualification (disqualification) decisions. The artificial neural network model can be concluded as an ideal alternative for performing the contractor pre-qualification task.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/29551/

Publicador

Emerald Group Publishing Ltd.

Relação

http://eprints.qut.edu.au/29551/1/c29551.pdf

DOI:10.1108/eb021150

Lam, K.C., Ng, S.T., Hu, T., & Skitmore, Martin (2000) Decision support system for contractor pre-qualification : artificial neural network model. Engineering, Construction and Architectural Management, 7(3), pp. 251-266.

Direitos

Copyright 2000 Emerald Group Publishing Ltd

Fonte

Faculty of Built Environment and Engineering; School of Urban Development

Palavras-Chave #120203 Quantity Surveying #120201 Building Construction Management and Project Planning #contractor pre-qualification #artificial neural network #conjugated gradient descent algorithm #decision support system
Tipo

Journal Article