Article ID: | iaor20001635 |
Country: | Netherlands |
Volume: | 115 |
Issue: | 3 |
Start Page Number: | 608 |
End Page Number: | 615 |
Publication Date: | Jun 1999 |
Journal: | European Journal of Operational Research |
Authors: | Jacques J.M., Bertels K., Neuberg L., Gatot L. |
Keywords: | neural networks, gradient methods, statistics: multivariate |
In this paper, we present a classification model to evaluate the performance of companies on the basis of qualitative criteria, such as organizational and managerial variables. The classification model evaluates the eligibility of the company to receive state subsidies for the development of high tech products. We furthermore created a similar model using the backpropagation learning algorithm and compare its classification performance against the linear model. We also focus on the robustness of the two approaches with respect to uncertain information. This research shows that backpropagation neural networks are not superior to Linear Discriminant Analysis models, except when they are given highly uncertain information.