To read this content please select one of the options below:

Selecting the neural network topology for student modelling of prediction of corporate bankruptcy

M.L. Nasir (M.L. Nasir is based in the Centre for Computational Intelligence at De Montfort University, Leicester, UK.)
R.I. John (R.I. John is based in the Centre for Computational Intelligence at De Montfort University, Leicester, UK.)
S.C. Bennett (S.C. Bennett is based in the Centre for Computational Intelligence at De Montfort University, Leicester, UK.)
D.M. Russell (D.M. Russell is based in the Department of Accounting and Finance, Leicester Business School, all at De Montfort University, Leicester, UK.)

Campus-Wide Information Systems

ISSN: 1065-0741

Article publication date: 1 March 2001

1399

Abstract

Neural network topology selection refers to a systematic procedure for selecting between competing models. Naturally, it is regarded as a key aspect in optimisation and replicability of neural network performance. When constructing neural network topologies, it is necessary to determine from the outset the general taxonomy of the neural network architectures to be constructed. The taxonomy considered in this study is the general taxonomy of time‐varying patterns which subsumes many existing architectures in the literature and points to several promising neural network architectures that have yet to be examined. The context of the problem is that choosing the right neural network topology for use in a particular domain such as corporate bankruptcy prediction with optimum generalisation performance is not, in any case, a trivial problem. The results of experiments presented in this paper would serve as a baseline against which to select between two competing architectures.

Keywords

Citation

Nasir, M.L., John, R.I., Bennett, S.C. and Russell, D.M. (2001), "Selecting the neural network topology for student modelling of prediction of corporate bankruptcy", Campus-Wide Information Systems, Vol. 18 No. 1, pp. 13-22. https://doi.org/10.1108/10650740110364390

Publisher

:

MCB UP Ltd

Copyright © 2001, MCB UP Limited

Related articles