𝔖 Bobbio Scriptorium
✦   LIBER   ✦

Analysis and applications of artificial neural networks

✍ Scribed by L. P. J. Veelenturf


Book ID
127424836
Publisher
Prentice Hall
Year
1995
Tongue
English
Weight
9 MB
Edition
1st
Category
Library
City
London; New York
ISBN-13
9780134898322

No coin nor oath required. For personal study only.

✦ Synopsis


Thorough, compact, and self-contained, this explanation and analysis of a broad range of neural nets is conveniently structured so that readers can first gain a quick global understanding of neural nets - without the mathematics - and can then delve into mathematical specifics as necessary. The behavior of neural nets is first explained from an intuitive perspective; the formal analysis is then presented; and the practical implications of the formal analysis are stated separately. Analyzes the behavior of the six main types of neural networks - The Binary Perceptron, The Continuous Perceptron (Multi-Layer Perceptron), The Bidirectional Memories, The Hopfield Network (Associative Neural Nets), The Self-Organizing Neural Network of Kohonen, and the new Time Sequentional Neural Network. For technically-oriented individuals working with information retrieval, pattern recognition, speech recognition, signal processing, data classification.


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