DocumentCode
916820
Title
Rival-Model Penalized Self-Organizing Map
Author
Cheung, Yiu-Ming ; Law, Lap-Tak
Author_Institution
Dept. of Comput. Sci., Hong Kong Baptist Univ.
Volume
18
Issue
1
fYear
2007
Firstpage
289
Lastpage
295
Abstract
As a typical data visualization technique, self-organizing map (SOM) has been extensively applied to data clustering, image analysis, dimension reduction, and so forth. In a conventional adaptive SOM, it needs to choose an appropriate learning rate whose value is monotonically reduced over time to ensure the convergence of the map, meanwhile being kept large enough so that the map is able to gradually learn the data topology. Otherwise, the SOM´s performance may seriously deteriorate. In general, it is nontrivial to choose an appropriate monotonically decreasing function for such a learning rate. In this letter, we therefore propose a novel rival-model penalized self-organizing map (RPSOM) learning algorithm that, for each input, adaptively chooses several rivals of the best-matching unit (BMU) and penalizes their associated models, i.e., those parametric real vectors with the same dimension as the input vectors, a little far away from the input. Compared to the existing methods, this RPSOM utilizes a constant learning rate to circumvent the awkward selection of a monotonically decreased function for the learning rate, but still reaches a robust result. The numerical experiments have shown the efficacy of our algorithm
Keywords
data visualisation; learning (artificial intelligence); self-organising feature maps; best-matching unit; constant learning rate; data visualization technique; rival-model penalized self-organizing map; Computer science; Convergence; Councils; Data visualization; Image analysis; Neurons; Quantization; Robustness; Topology; Two dimensional displays; Constant learning rate; rival-model penalized self-organizing map (RPSOM); self-organizing map (SOM); Algorithms; Artificial Intelligence; Computer Simulation; Models, Statistical; Neural Networks (Computer);
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2006.885039
Filename
4049813
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