Title of article :
Density and Approximation by Using Feed Forward Artificial Neural Networks
Author/Authors :
Naoum, R.S. University of Baghdad - College of Education, Ibn AI-Haitham, Iraq , Tawfiq, L.N.M. Baghdad University - College of Education -Ibn Al-Haitham, Iraq
From page :
146
To page :
159
Abstract :
In this paper , we will consider the density questions associated with the single hjdden layer feed forward model. We proved that a FFNN with one hidden layci can uniformly approximate any continuous function in C(k) (where k is a compact set in R ^n) to any requited accuracy; However, if the set of basis fi.mction is dense then the ANN s can has almost one hidden layer. But if the set of basis function non-dense, then we need more hidden layers. 1lso, we have shown that there exist localized functions and that there is no theoretical lower bound on the degree of approximation common to all activation functions( contrary to the s ituation in the single hidden layer model).
Journal title :
Ibn Alhaitham Journal For Pure and Applied Science
Journal title :
Ibn Alhaitham Journal For Pure and Applied Science
Record number :
2601298
Link To Document :
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