内容简介
This book examines the mathematics, probability, statistics, and computational theory underlying neural networks and their applications. In addition to the theoretical work, the book covers a considerable range of neural network topics such as learning and training, neural network classifiers, memory-based networks, self-organizing maps and unsupervised learning, Hopfeld networks, radial basis function networks, and general network modelling and theory. Added to the book's mathematical and neural network topics are applications in chemistry, speech recognition, automatic control, nonlinear programming, medicine, image processing, finance, time series, and dynamics. As a result, the book surveys a wide range of recent research on the theoretical foundations of creating neural network models in a variety of application areas.
内容简介
This book examines the mathematics, probability, statistics, and computational theory underlying neural networks and their applications. In addition to the theoretical work, the book covers a considerable range of neural network topics such as learning and training, neural network classifiers, memory-based networks, self-organizing maps and unsupervised learning, Hopfeld networks, radial basis function networks, and general network modelling and theory. Added to the book's mathematical and neural network topics are applications in chemistry, speech recognition, automatic control, nonlinear programming, medicine, image processing, finance, time series, and dynamics. As a result, the book surveys a wide range of recent research on the theoretical foundations of creating neural network models in a variety of application areas.
猜你喜欢
-
Katherine Applegate
-
Mick Herron
-
Martin Chorzempa
-
Jacob Eisenstein
-
Ian Kershaw
-
Colleen Hoover
-
Stephen King
-
Christopher Paolini
-
Claire Robinson Mphil
-
Stephen Kotkin
大家都喜欢
-
蔡崇达
-
文聘元
-
莫言
-
蔡崇达
-
[丹]安娜·艾克博
-
胡成
-
凯瑟琳·麦考利夫
-
凯茜·霍姆斯
-
常青
-
胡学文