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Pattern Recognition Letters
Volume 20, Issues 11-13, November 1999, Pages 1353-1359
 
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doi:10.1016/S0167-8655(99)00106-3    How to Cite or Link Using DOI (Opens New Window)
Copyright © 1999 Published by Elsevier Science B.V.

Feature-based decision aggregation in modular neural network classifiers

Nayer Wanas Corresponding Author Contact Information, E-mail The Corresponding Author, Mohamed S. Kamel E-mail The Corresponding Author, Gasser Auda E-mail The Corresponding Author and Fakhreddine Karray E-mail The Corresponding Author

Pattern Analysis and Machine Intelligence Laboratory, Systems Design Engineering Department, University of Waterloo, Waterloo, Ont., Canada N2L-3G1

Available online 2 December 1999.

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Abstract

In several modular neural network (MNN) architectures, the individual decisions at the module level have to be integrated together using a voting scheme. All these voting schemes use the outputs of the individual modules to produce a global output without inferring explicit information from the problem feature space. This makes the choice of the aggregation procedure very subjective. In this work, a new MNN architecture will be presented. This architecture integrates learning into the voting scheme. We will be focusing on making the decision fusion a more dynamic process. In this context, dynamic means the aggregation procedure which has the flexibility to adapt to changes in the input. This approach requires the aggregation procedure to gather information about the input to help better understand how to dynamically aggregate decisions.

Author Keywords: Author Keywords: Classification; Classifier combination; Dynamic decision fusion; Modular neural networks

Article Outline

1. Introduction
2. Feature based decision aggregation
2.1. Classifiers
2.2. Error analysis
2.3. Modification modules
2.4. Detectors
2.5. The aggregation procedure
3. Test problems and results
3.1. Data sets
3.1.1. Gaussian 20-class problem
3.1.2. Arabic caps problem
3.2. Results
3.2.1. Twenty class problem
3.2.2. Arabic caps problem
4. Conclusion
Discussion
Acknowledgements
References



Pattern Recognition Letters
Volume 20, Issues 11-13, November 1999, Pages 1353-1359
 
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