TY - JOUR
T1 - Approximation by Regular Neural Networks in Terms of Dunkl Transform
AU - Bhaya, Eman AU - Al-sammak, Omar
JO - Research Journal of Applied Sciences
VL - 11
IS - 10
SP - 933
EP - 941
PY - 2016
DA - 2001/08/19
SN - 1815-932x
DO - rjasci.2016.933.941
UR - https://makhillpublications.co/view-article.php?doi=rjasci.2016.933.941
KW - Neural network approximation
KW -saturation problem
KW -spaces
KW -direct inequality
AB - Dunkl operator here we introduce a modified version of and use it to prove a theorem shows that functionals and rth order modulus of smoothness in K-theorem shows thatare equivalent. We use this equivalence to introduce p<1 spaces for Lp (K) essential degree of approximation using regular neural networks p and how a multivariate function in spaces for can be approximated using a p<1 spaces for Lp (K) multivariate p function in forward regular neural network. So, we can have the essential approximation using regular FFN. P<1 spaces for Lp (K) ability of a multivariate function in spaces for using regular FFN.
ER -