Deep Neural Networks

Deep Neural Networks

AngličtinaEbook
Zhang, Yunong
Taylor & Francis Ltd
EAN: 9780429760983
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Podrobné informace

Toward Deep Neural Networks: WASD Neuronet Models, Algorithms, and Applications introduces the outlook and extension toward deep neural networks, with a focus on the weights-and-structure determination (WASD) algorithm. Based on the authors’ 20 years of research experience on neuronets, the book explores the models, algorithms, and applications of the WASD neuronet, and allows reader to extend the techniques in the book to solve scientific and engineering problems. The book will be of interest to engineers, senior undergraduates, postgraduates, and researchers in the fields of neuronets, computer mathematics, computer science, artificial intelligence, numerical algorithms, optimization, simulation and modeling, deep learning, and data mining.

Features

Focuses on neuronet models, algorithms, and applications

Designs, constructs, develops, analyzes, simulates and compares various WASD neuronet models, such as single-input WASD neuronet models, two-input WASD neuronet models, three-input WASD neuronet models, and general multi-input WASD neuronet models for function data approximations

Includes real-world applications, such as population prediction

Provides complete mathematical foundations, such as Weierstrass approximation, Bernstein polynomial approximation, Taylor polynomial approximation, and multivariate function approximation, exploring the close integration of mathematics (i.e., function approximation theories) and computers (e.g., computer algorithms)

Utilizes the authors'' 20 years of research on neuronets

EAN 9780429760983
ISBN 0429760981
Typ produktu Ebook
Vydavatel Taylor & Francis Ltd
Datum vydání 19. března 2019
Stránky 366
Jazyk English
Země United Kingdom
Autoři Chen, Dechao (Sun Yat-sen University); Ye, Chengxu (Qinghai Normal University); Zhang, Yunong
Série Chapman & Hall/CRC Artificial Intelligence and Robotics Series