Computer Science – Learning
Scientific paper
2009-05-14
Computer Science
Learning
8 pages, 3 figures
Scientific paper
This paper presents a new hybrid learning algorithm for unsupervised classification tasks. We combined Fuzzy c-means learning algorithm and a supervised version of Minimerror to develop a hybrid incremental strategy allowing unsupervised classifications. We applied this new approach to a real-world database in order to know if the information contained in unlabeled features of a Geographic Information System (GIS), allows to well classify it. Finally, we compared our results to a classical supervised classification obtained by a multilayer perceptron.
Alexandre Frdéric
Bougrain Laurent
Torres-Moreno Juan-Manuel
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