A NOVEL APPROACH FOR LEARNING RATE IN SELF ORGINIZING MAP (SOM)
Abstract
The performance of resultant topological structure of Kohonen Self Organizing Map SOM is highly dependent of the learning rate and neighborhood parameters. In literature there are plenty many different types of approaches to and proposals for those parameters. It has been investigated that in general the learning rate and neighborhood parameters are data independent and predefined before the training period. Here in this paper a novel approach has been proposed to change the learning rate parameter according to the interaction of neurons with data. During training, the worst matching neuron also tracked and used to trace the formation of topological structure of SOM. A slight modification on conventional learning rate with proposed method has a considerable influence on resultant topologies in a positive way. The effects of this approach has been tested with the real world problem and different synthetic data.
Keywords
References
- Prof. Dr. Atakan Doğan
- Prof. Dr. Rıfat Edizkan
- Doç. Dr. Hakan Güray Şenel
Details
Primary Language
English
Subjects
Engineering
Journal Section
Research Article
Authors
Emin Germen
*
Anadolu Universty, Electrical Electronics Engineering Department
Türkiye
Publication Date
March 31, 2018
Submission Date
December 7, 2017
Acceptance Date
January 4, 2018
Published in Issue
Year 2018 Volume: 19 Number: 1
Cited By
Clustering national higher education systems worldwide using Sustainable Development Goals 4 indicators and self-organizing maps
International Journal of Educational Management
https://doi.org/10.1108/IJEM-12-2024-0834