Parametrized Gudermannian function induced Banach space valued ordinary and fractional neural networks approximations
Keywords:
Parametrized Gudermannian sigmoid function, Banach space valued neural network approximation, Banach space valued quasiinterpolation operator, modulus of continuity, Banach space valued Caputo fractional derivative, Banach space valued fractional approximation.Abstract
Here we examine the univariate quantitative approximation, ordinary and fractional, of Banach space valued continuous functions on a compact interval or all the real line by quasi-interpolation Banach space valued neural network operators. These approximations are derived by establishing Jackson type inequalities involving the modulus of continuity of the engaged function or its Banach space valued high order derivative or fractional derivatives. Our operators are deÖned by using a density function generated by a parametrized Gudermannian sigmoid function. The approximations are pointwise and of the uniform norm. The related Banach space valued feed-forward neural networks are with one hidden layer.