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ID 30092
FullText URL
Author
Tanaka, Masahiro
Furukawa, Yasuyuki
Tanino, Tetsuzo
Abstract

The paper deals with supervised learning. In many problems, the training data contains only the final judgment information in conjunction with the input data, but in some problems, more information needs to be extracted from the training data. A typical example is a medical diagnosis. The objective of the paper is to give the user internal information contained in the data by using only the binary class-information data. A self organizing map (SOM) is used as the main tool for this purpose. Our method is to tune the weight of the elements of the data so that the data of the same category tend to be mapped in the near points on the SOM, and the separation of different categories can be carried out successfully. A genetic algorithm (GA) is used for the tuning of the weight coefficients. After the learning, we can obtain the feature map, as well as the weight coefficients of the elements that indicate the importance for the categorization for the current data

Keywords
genetic algorithms
learning (artificial intelligence)
pattern classification
self-organising feature maps
tuning
Note
Digital Object Identifier: 10.1109/ICEC.1996.542668
Published with permission from the copyright holder. This is the institute's copy, as published in Evolutionary Computation, 1996., Proceedings of IEEE International Conference on, 20-22 May 1996, Pages 602-605.
Publisher URL:http://dx.doi.org/10.1109/ICEC.1996.542668
Copyright © 1996 IEEE. All rights reserved.
Published Date
1996-5
Publication Title
Evolutionary Computation
Start Page
602
End Page
605
Content Type
Journal Article
language
English
Refereed
True
DOI
Submission Path
industrial_engineering/53