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Unsupervised Clustering using Self-Optimizing Neural Networks
Wroclaw, Poland September 08-September 10
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ISDA.2005.955th International Conference on Intel ...
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Adrian Horzyk, University of Science and Technology, Cracow, Poland
Self-Optimizing Neural Networks (SONNs) [7] are very effective in solving different classification tasks. They have been successfully used to many different problems [5-10,15,16]. The classical SONN [7] adaptation process has been defined as supervised. This paper introduces a new very interesting SONN feature - the unsupervised clustering ability. The unsupervised SONNs (US-SONNs) are able to find out most differentiating features for some training data and recursively divide them into subgroups. USSONNs can also characterize the importance of features differentiating these groups. The division of the data is recursively performed till the data in subgroups differ imperceptibly. The SONN clustering proceeds very fast in comparison to other unsupervised clustering methods [1,3,4,11,12,14].
Citation:
Adrian Horzyk, "Unsupervised Clustering using Self-Optimizing Neural Networks," isda, pp.118-123, 5th International Conference on Intelligent Systems Design and Applications (ISDA'05), 2005
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