Solving Classification Problems Using Supervised Self-Organizing Map

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Thammano, Arit and Kiatwuthiamorn, Jiraporn (2007) Solving Classification Problems Using Supervised Self-Organizing Map In: 2007 IEEE International Symposium on Signal Processing and Information Technology, 2007-12-15, Giza, Egypt.

Abstract

This paper proposes the new approach to deal with the classification problems by modifying the well-known Kohonen self- organizing map in order to make it able to solve classification problems. During training, the fuzzy membership function is used in place of the Euclidean distance to find the best matching cluster for the input pattern. In order to improve the efficiency of proposed model, the fuzzy entropy concept is employed to reduce the number of nodes in the cluster layer. The performance of the proposed model was compared with the fuzzy ARTMAP neural network. The results on five benchmark problems are very encouraging.

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Conference or Workshop Item (Paper)

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ระบบ อัตโนมัติ

Date Deposited:

2021-09-09 23:53:46

Last Modified:

2022-04-16 11:09:49

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