AI Mathematics: Advanced Neural Network Approximation AI Mathematics: Advanced Neural Network Approximation

AI Mathematics: Advanced Neural Network Approximation

    • USD 219.99
    • USD 219.99

Descripción editorial

This book presents the new idea of going from the neural networks main tools, the activation functions, to convolution integrals and singular integrals approximations. That is the rare case of employing applied mathematics to treat theoretical ones.

Authors introduce and use also the symmetrized neural network operators able to achieve supersonic speeds of convergence.

Authors use a great variety of activation functions. Thus, in this book all presented is original work by the author given at a very general level to cover a maximum number of different kinds of Neural Networks: giving ordinary, fractional, and stochastic approximations. It is presented here univariate, fractional, and multivariate approximations. Iterated-sequential multi-layer approximations are also studied.

GÉNERO
Informática e Internet
PUBLICADO
2026
14 de febrero
IDIOMA
EN
Inglés
EXTENSIÓN
842
Páginas
EDITORIAL
Springer Nature Switzerland
VENDEDOR
Springer Nature B.V.
TAMAÑO
210.5
MB
Frontiers in Functional Equations and Analytic Inequalities Frontiers in Functional Equations and Analytic Inequalities
2019
Towards Intelligent Modeling: Statistical Approximation Theory Towards Intelligent Modeling: Statistical Approximation Theory
2011
Intelligent Comparisons: Analytic Inequalities Intelligent Comparisons: Analytic Inequalities
2015
Frontiers In Time Scales And Inequalities Frontiers In Time Scales And Inequalities
2015
Inequalities Based on Sobolev Representations Inequalities Based on Sobolev Representations
2011
Approximation by Multivariate Singular Integrals Approximation by Multivariate Singular Integrals
2011