Title of article :
Influence Activation Function in Approximate Periodic Functions Using Neural Networks
Author/Authors :
tawfiq, luma n. m. university of baghdad - college of education for pure science (ibn al-haitham) - department of mathematics, Iraq , jabber, ala k. university of baghdad - college of education for pure science (ibn al-haitham) - department of mathematics, Iraq
Abstract :
The aim of this paper is to design fast neural networks to approximate periodic
functions, that is, design a fully connected networks contains links between all nodes in
adjacent layers which can speed up the approximation times, reduce approximation failures,
and increase possibility of obtaining the globally optimal approximation. We training
suggested network by Levenberg-Marquardt training algorithm then speeding suggested
networks by choosing most activation function (transfer function) which having a very fast
convergence rate for reasonable size networks.
In all algorithms, the gradient of the performance function (energy function) is used to
determine how to adjust the weights such that the performance function is minimized, where
the back propagation algorithm has been used to increase the speed of training.
Keywords :
Activation Function , Training network , Artificial neural network
Journal title :
Ibn Alhaitham Journal For Pure and Applied Science
Journal title :
Ibn Alhaitham Journal For Pure and Applied Science