Modified self-organising maps with a new topology and initialisation algorithm |
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Authors: | Ehsan Mohebi Adil Bagirov |
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Affiliation: | 1. School of Science, Information Technology and Engineering, Federation University Australia, Victoria 3353, Australiae.mohebi@federation.edu.au;3. School of Science, Information Technology and Engineering, Federation University Australia, Victoria 3353, Australia |
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Abstract: | Mapping quality of the self-organising maps (SOMs) is sensitive to the map topology and initialisation of neurons. In this article, in order to improve the convergence of the SOM, an algorithm based on split and merge of clusters to initialise neurons is introduced. The initialisation algorithm speeds up the learning process in large high-dimensional data sets. We also develop a topology based on this initialisation to optimise the vector quantisation error and topology preservation of the SOMs. Such an approach allows to find more accurate data visualisation and consequently clustering problem. The numerical results on eight small-to-large real-world data sets are reported to demonstrate the performance of the proposed algorithm in the sense of vector quantisation, topology preservation and CPU time requirement. |
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Keywords: | self-organising maps vector quantisation SOM topology preservation SOM learning algorithm SOM initialisation algorithm |
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