ScienceDirect® Home Skip Main Navigation Links
You have guest access to ScienceDirect. Find out more.
 
Home
Browse
My Settings
Alerts
Help
 Quick Search
 Search tips (Opens new window)
    Clear all fields    
Neurocomputing
Volume 62, December 2004, Pages 327-347
 
Font Size: Decrease Font Size  Increase Font Size
 Abstract - selected
Article
Purchase PDF (459 K)

 
 
 
Related Articles in ScienceDirect
View More Related Articles
 
View Record in Scopus
 
doi:10.1016/j.neucom.2004.03.011    How to Cite or Link Using DOI (Opens New Window)
Copyright © 2004 Elsevier B.V. All rights reserved.

A measure of fault tolerance for functional networks

Oscar Fontenla-RomeroCorresponding Author Contact Information, E-mail The Corresponding Author, a, Enrique Castillob, Amparo Alonso-Betanzosa and Bertha Guijarro-Berdiñasa

a Department of Computer Science, Faculty of Informatics, University of A Coruña, Campus de Elviña s/n, A, Coruña 15071, Spain b Department of Applied Mathematics and Computational Sciences, University of Cantabria and University of Castilla-La Mancha, Avda de Los Castros s/n, Santander 39005, Spain

Received 17 March 2003; 
Revised 17 March 2004; 
accepted 17 March 2004. 
Available online 19 May 2004.

Purchase the full-text article



References and further reading may be available for this article. To view references and further reading you must purchase this article.

Abstract

This paper presents a study of the influence of perturbations in the parameters of a functional network. A quantitative measure is introduced, related to the change in the mean squared error when noise is applied to the network parameters. This measure, based on statistical sensitivity, provides a fault tolerance estimate for a functional network and allows the performance degradation of this kind of system to be predicted. It can be used, therefore, to evaluate performance differences between the training process carried out on a computer and its hardware implementation. The experimental results obtained for different functional network architectures and a feedforward multilayer neural network confirm the validity of the proposed model.

Author Keywords: Statistical sensitivity; Fault tolerance; Parameter perturbation; Functional networks; Neural networks

Article Outline

1. Introduction
2. Background
3. Statistical sensitivity of functional networks to parameter noise
4. Mean squared sensitivity
5. Experimental results
5.1. Generalized associative functional network
5.2. Separable functional network
5.3. Feedforward multilayer neural network
6. Conclusions
Acknowledgements
References
Vitae









Neurocomputing
Volume 62, December 2004, Pages 327-347
 
Home
Browse
My Settings
Alerts
Help
Elsevier.com (Opens new window)
About ScienceDirect  |  Contact Us  |  Information for Advertisers  |  Terms & Conditions  |  Privacy Policy
Copyright © 2008 Elsevier B.V. All rights reserved. ScienceDirect® is a registered trademark of Elsevier B.V.