A Review of Clustering Techniques with FBPN

  IJCOT-book-cover
 
International Journal of Computer & Organization Trends  (IJCOT)          
 
© 2014 by IJCOT Journal
Volume - 4 Issue - 3
Year of Publication : 2014
Authors :  Sasirekha .J , Dr. Savithri .V
DOI :  10.14445/22492593/IJCOT-V8P302

Citation

Sasirekha .J , Dr. Savithri .V. "A Review of Clustering Techniques with FBPN", International Journal of Computer & organization Trends (IJCOT), V4(3):5-9 May - Jun 2014, ISSN:2249-2593, www.ijcotjournal.org. Published by Seventh Sense Research Group.

Abstract

This study predicts the best supervised learning method of clustering techniques in fuzzy back propagation network(FBPN). Image processing algorithms are used to extract the information and patterns derived by process. Classification are done using predictive model of fuzzy technique of back propagation algorithm The values of the features are evaluated by FBPN algorithm.

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Keywords
Clustering, Fuzzy, Back Propagation, Neural Networks.