Symmetrized and Perturbed A-Generalized Logistic Complex Valued Trigonometric and Hyperbolic Neural Network Enhanced Multivariate Approximation
摘要
Here we study the multivariate quantitative symmetrized and perturbed approximation of complex valued continuous functions on a box by complex valued symmetrized and perturbed multivariate neural network operators. These approximations are derived by establishing Jackson type inequalities involving the modulus of continuity of the used function’s high order partial derivatives. The types of our approximations are trigonometric and hyperbolic. Our multivariate symmetrized operators are defined by using a multivariate density function generated by a q-deformed and \(\lambda \) -parametrized A-generalized logistic function. These dynamic approximations are pointwise and of the uniform norm. The related complex valued feed-forward neural networks are with one hidden layer.