DocumentCode
1442075
Title
Self-organizing feature maps with self-adjusting learning parameters
Author
Haese, Karin
Author_Institution
Inst. of Flight Guidance, German Aerosp. Res. Establ., Braunschweig, Germany
Volume
9
Issue
6
fYear
1998
fDate
11/1/1998 12:00:00 AM
Firstpage
1270
Lastpage
1278
Abstract
Presents an extension of the self-organizing learning algorithm of feature maps in order to improve its convergence to neighborhood preserving maps. The Kohonen learning algorithm is controlled by two learning parameters, which have to be chosen empirically because there exists neither rules nor a method for their calculation. Consequently, often time consuming parameter studies have to precede before a neighborhood preserving feature map is obtained. To circumvent those lengthy numerical studies, here, a method is presented and incorporated into the learning algorithm which determines the learning parameters automatically. Therefore, system models of the learning and organizing process are developed in order to be followed and predicted by linear and extended Kalman filters. The learning parameters are optimal within the system models, so that the self-organizing process converges automatically to a neighborhood preserving feature map of the learning data
Keywords
Kalman filters; filtering theory; learning (artificial intelligence); nonlinear filters; self-organising feature maps; convergence; extended Kalman filters; learning algorithm; linear Kalman filters; neighborhood preserving maps; self-adjusting learning parameters; self-organizing feature maps; Clustering methods; Convergence of numerical methods; Filtering; Helium; Kalman filters; Neurons; Organizing; Parameter estimation; Predictive models; Topology;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.728376
Filename
728376
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