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Neural Computing: Theory and Practice
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The neural computing theory and practice book will be the best reason to choose, especially for the students, teachers, doctors, businessman, and other professions who are fond of reading.Abstract:
In what case do you like reading so much? What about the type of the neural computing theory and practice book? The needs to read? Well, everybody has their own reason why should read some books. Mostly, it will relate to their necessity to get knowledge from the book and want to read just to get entertainment. Novels, story book, and other entertaining books become so popular this day. Besides, the scientific books will also be the best reason to choose, especially for the students, teachers, doctors, businessman, and other professions who are fond of reading.read more
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Progress in supervised neural networks
Don R. Hush,Bill G. Horne +1 more
TL;DR: Theoretical results concerning the capabilities and limitations of various neural network models are summarized, and some of their extensions are discussed.