Neural networks and brain function
Author(s)
Bibliographic Information
Neural networks and brain function
Oxford University Press, 1998
- : hard
- : pbk
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Note
Includes bibliographical references (p. [371]-413) and index
Description and Table of Contents
- Volume
-
: pbk ISBN 9780198524328
Description
The aim of this book is to describe the types of computation that can be performed by biologically plausible neural networks, and to show how these may be implemented in different systems in the brain. Neural Networks and Brain Function is structured in three sections, each of which addresses a different need in the market. The first section introduces and describes the operation of several fundamental types of neural network. The second section describes
real neural networks in several brain systems, and shows how it is becoming possible to construct theories about how some parts of the brain work; it also provides an indication of the different neuroscience and neurocomputation techniques that will need to be combined to ensure further rapid progress in
understanding how parts of the brain work. The third section, a collection of appendices, introduces the more formal quantitative approaches to many of the networks described. This is a clearly written and thoughtfully structured introduction to a fascinating and complex field of neuroscience. It will be a key text for researchers, graduate students and advanced undergraduates in the field, particularly for those without a background in computer science.
Table of Contents
- Ch. 1. Introduction
- Ch. 2. Pattern Association Memory
- Ch. 3. Autoassociation Memory
- Ch. 4. Competitive Networks, Including Self-Organizing Maps
- Ch. 5. Error-Correcting Networks: Perceptrons, Backpropagation of Error in Multilayer Networks, and Reinforcement Learning Algorithms
- Ch. 6. Hippocampus and Memory
- Ch. 7. Pattern Association in the Brain: Amygdala and Orbitofrontal Cortex
- Ch. 8. Cortical Networks for Invariant Pattern Recognition
- Ch. 9. Motor Systems: Cerebellum and Basal Ganglia
- Ch. 10. Cerebral Neocortex
- Appendix 1. Introduction to Linear Algebra for Neural Networks
- Appendix 2. Information Theory
- Appendix 3. Pattern Associators
- Appendix 4. Autoassociators
- Appendix 5. Recurrent Dynamics
- Volume
-
: hard ISBN 9780198524335
Description
This text seeks to describe the types of computation that can be performed by biologically plausible neural networks, and to show how these may be implemented in different systems in the brain. Suitable for researchers, graduate students and advanced undergraduates in the fields of neuroscience and artificial intelligence, this is an accessible introduction to the problems of how the brain works and how our behaviour is produced.
Table of Contents
- Pattern association memory
- autoassociation memory
- competitive networks, including self-organizing maps
- error-correcting networks - perceptrons, backpropagation of error in multilayer networks, and reinforcement learning algorithms
- hippocampus and memory
- pattern association in the brain - amygdala and orbitofrontal cortex
- cortical networks for invariant pattern recognition
- motor systems - cerebellum and basal ganglia
- cerebral neocortex. Appendix 1: introduction to linear algebra for neural networks. Appendix 2: Information theory. Appendix 3: Pattern associators. Appendix 4: Autoassociators. Appendix 5: Recurrent dynamics.
by "Nielsen BookData"