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Neural Networks : a Systematic Introduction /

Artificial neural networks are an alternative computational paradigm with roots in neurobiology which has attracted increasing interest in recent years. This book is a comprehensive introduction to the topic that stresses the systematic development of the underlying theory. Starting from simple thre...

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Detalles Bibliográficos
Clasificación:Libro Electrónico
Autor principal: Rojas, Raúl (Autor)
Formato: Electrónico eBook
Idioma:Inglés
Publicado: Berlin, Heidelberg : Springer Berlin Heidelberg, 1996.
Temas:
Acceso en línea:Texto completo

MARC

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245 1 0 |a Neural Networks :  |b a Systematic Introduction /  |c by Raúl Rojas. 
264 1 |a Berlin, Heidelberg :  |b Springer Berlin Heidelberg,  |c 1996. 
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505 0 |a 1. The Biological Paradigm -- 1.1 Neural computation -- 1.2 Networks of neurons -- 1.3 Artificial neural networks -- 1.4 Historical and bibliographical remarks -- 2. Threshold Logic -- 2.1 Networks of functions -- 2.2 Synthesis of Boolean functions -- 2.3 Equivalent networks -- 2.4 Recurrent networks -- 2.5 Harmonic analysis of logical functions -- 2.6 Historical and bibliographical remarks -- 3. Weighted Networks -- The Perceptron -- 3.1 Perceptrons and parallel processing -- 3.2 Implementation of logical functions -- 3.3 Linearly separable functions -- 3.4 Applications and biological analogy -- 3.5 Historical and bibliographical remarks -- 4. Perceptron Learning -- 4.1 Learning algorithms for neural networks -- 4.2 Algorithmic learning -- 4.3 Linear programming -- 4.4 Historical and bibliographical remarks -- 5. Unsupervised Learning and Clustering Algorithms -- 5.1 Competitive learning -- 5.2 Convergence analysis -- 5.3 Principal component analysis -- 5.4 Some applications -- 5.5 Historical and bibliographical remarks -- 6. One and Two Layered Networks -- 6.1 Structure and geometric visualization -- 6.2 Counting regions in input and weight space -- 6.3 Regions for two layered networks -- 6.4 Historical and bibliographical remarks -- 7. The Backpropagation Algorithm -- 7.1 Learning as gradient descent -- 7.2 General feed-forward networks -- 7.3 The case of layered networks -- 7.4 Recurrent networks -- 7.5 Historical and bibliographical remarks -- 8. Fast Learning Algorithms -- 8.1 Introduction -- classical backpropagation -- 8.2 Some simple improvements to backpropagation -- 8.3 Adaptive step algorithms -- 8.4 Second-order algorithms -- 8.5 Relaxation methods -- 8.6 Historical and bibliographical remarks -- 9. Statistics and Neural Networks -- 9.1 Linear and nonlinear regression -- 9.2 Multiple regression -- 9.3 Classification networks -- 9.4 Historical and bibliographical remarks -- 10. The Complexity of Learning -- 10.1 Network functions -- 10.2 Function approximation -- 10.3 Complexity of learning problems -- 10.4 Historical and bibliographical remarks -- 11. Fuzzy Logic -- 11.1 Fuzzy sets and fuzzy logic -- 11.2 Fuzzy inferences -- 11.3 Control with fuzzy logic -- 11.4 Historical and bibliographical remarks -- 12. Associative Networks -- 12.1 Associative pattern recognition -- 12.2 Associative learning -- 12.3 The capacity problem -- 12.4 The pseudoinverse -- 12.5 Historical and bibliographical remarks -- 13. The Hopfield Model -- 13.1 Synchronous and asynchronous networks -- 13.2 Definition of Hopfield networks -- 13.3 Converge to stable states -- 13.4 Equivalence of Hopfield and perceptron learning -- 13.5 Parallel combinatorics -- 13.6 Implementation of Hopfield networks -- 13.7 Historical and bibliographical remarks -- 14. Stochastic Networks -- 14.1 Variations of the Hopfield model -- 14.2 Stochastic systems -- 14.3 Learning algorithms and applications -- 14.4 Historical and bibliographical remarks -- 15. Kohonen Networks -- 15.1 Self-organization -- 15.2 Kohonen's model -- 15.3 Analysis of convergence -- 15.4 Applications -- 15.5 Historical and bibliographical remarks -- 16. Modular Neural Networks -- 16.1 Constructive algorithms for modular networks -- 16.2 Hybrid networks -- 16.3 Historical and bibliographical remarks -- 17. Genetic Algorithms -- 17.1 Coding and operators -- 17.2 Properties of genetic algorithms -- 17.3 Neural networks and genetic algorithms -- 17.4 Historical and bibliographical remarks -- 18. Hardware for Neural Networks -- 18.1 Taxonomy of neural hardware -- 18.2 Analog neural networks -- 18.3 Digital networks -- 18.4 Innovative computer architectures -- 18.5 Historical and bibliographical remarks. 
520 |a Artificial neural networks are an alternative computational paradigm with roots in neurobiology which has attracted increasing interest in recent years. This book is a comprehensive introduction to the topic that stresses the systematic development of the underlying theory. Starting from simple threshold elements, more advanced topics are introduced, such as multilayer networks, efficient learning methods, recurrent networks, and self-organization. The various branches of neural network theory are interrelated closely and quite often unexpectedly, so the chapters treat the underlying connection between neural models and offer a unified view of the current state of research in the field. The book has been written for anyone interested in understanding artificial neural networks or in learning more about them. The only mathematical tools needed are those learned during the first two years at university. The text contains more than 300 figures to stimulate the intuition of the reader and to illustrate the kinds of computation performed by neural networks. Material from the book has been used successfully for courses in Germany, Austria and the United States. 
504 |a Includes bibliographical references and index. 
546 |a English. 
590 |a ProQuest Ebook Central  |b Ebook Central Academic Complete 
650 0 |a Artificial intelligence. 
650 0 |a Computer simulation. 
650 0 |a Optical pattern recognition. 
650 0 |a Computer science. 
650 0 |a Biology  |x Data processing. 
650 0 |a Digital computer simulation. 
650 0 |a Electronic data processing. 
650 6 |a Intelligence artificielle. 
650 6 |a Simulation par ordinateur. 
650 6 |a Reconnaissance optique des formes (Informatique) 
650 6 |a Informatique. 
650 6 |a Biologie  |x Informatique. 
650 7 |a artificial intelligence.  |2 aat 
650 7 |a simulation.  |2 aat 
650 7 |a computer science.  |2 aat 
650 7 |a data processing.  |2 aat 
650 7 |a Electronic data processing  |2 fast 
650 7 |a Digital computer simulation  |2 fast 
650 7 |a Artificial intelligence  |2 fast 
650 7 |a Biology  |x Data processing  |2 fast 
650 7 |a Computer science  |2 fast 
650 7 |a Computer simulation  |2 fast 
650 7 |a Optical pattern recognition  |2 fast 
776 0 8 |i Printed edition:  |z 9783540605058 
776 0 8 |i Printed edition:  |z 9783642610691 
856 4 0 |u https://ebookcentral.uam.elogim.com/lib/uam-ebooks/detail.action?docID=3093727  |z Texto completo 
938 |a ProQuest Ebook Central  |b EBLB  |n EBL3093727 
994 |a 92  |b IZTAP