Visualization of multimedimensional data taking into account the learning flow of the self-organizing neural network
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Date issued
2003
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
UNION Agency – Science Press
Abstract
In the paper, we discuss the visualization of multidimensional vectors taking into account the learning flow of
the self-organizing neural network. A new algorithm realizing a combination of the self-organizing map
(SOM) and Sammon’s mapping has been proposed. It takes into account the intermediate learning results of
the SOM. The experiments have showed that the algorithm gives lower mean projection errors as compared
with a consequent application of the SOM and Sammon’s mapping. This is the essential advantage of the new
algorithm, i.e. we succeed to eliminate the influence of the “magic factor” a ( 0 <a £1 ) on Sammon’s
mapping results. For larger values of a (a >1 ), the mean projection error grows. However, in this case the
new algorithm operates more stable and gives smaller values of the mean projection error.
Description
Subject(s)
vizualizace dat, neuronové sítě, samoorganizující se mapy
Citation
Journal of WSCG. 2003, vol. 11, no. 1-3.