DocumentCode :
707353
Title :
Comparison of sigmoidal FFANN training algorithms for function approximation problems
Author :
Bhatia, M.P.S. ; Veenu ; Chandra, Pravin
Author_Institution :
Div. of Comput. Eng., Netaji Subhas Inst. of Technol. (NSIT), Dwarka, India
fYear :
2015
fDate :
11-13 March 2015
Firstpage :
717
Lastpage :
721
Abstract :
The estimation of unknown function from a number of data inputs has number of various applications like in Engineering, Artificial intelligence, Statistics, Artificial Neural Networks, Genetic algorithms etc. Many papers have described the individual methods. But very less is known about the comparative performance of various methods. In this paper we give the comparative performance of the neural network using ten different approximation functions and twelve various training algorithms. Our study uses MATLAB 2013a 8.1 Neural Network toolbox for experimentation. The performance of the method on the neural network depends on the approximation function type and the various properties of training data. We found that Bayesian Regulation Backpropagation method proved to be best in performance using function 6 given in the paper out of twelve different algorithms used.
Keywords :
Bayes methods; function approximation; learning (artificial intelligence); mathematics computing; neural nets; Bayesian regulation backpropagation method; MATLAB 2013a 8.1 neural network toolbox; approximation function type; function approximation problems; sigmoidal FFANN training algorithms; training algorithms; Approximation algorithms; Approximation methods; Artificial neural networks; Backpropagation; Computer architecture; Training; Artificial Neural Network (ANN); Backpropagation Algorithm; Feed Forward Artificial Neural Network (FFANN); Function approximation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computing for Sustainable Global Development (INDIACom), 2015 2nd International Conference on
Conference_Location :
New Delhi
Print_ISBN :
978-9-3805-4415-1
Type :
conf
Filename :
7100343
Link To Document :
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