Neural networks for pattern recognition
Author(s)
Bibliographic Information
Neural networks for pattern recognition
Clarendon Press, 1995
- : hbk
- : pbk
Related Bibliography 1 items
Available at / 63 libraries
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University Library for Agricultural and Life Sciences, The University of Tokyo図
: pbkA9015375019856003
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Hokkaido University, Library, Graduate School of Science, Faculty of Science and School of Science図書
: pbk006.4/B5412070391083
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Note
Includes bibliographical references (p. [457]-475) and index
Description and Table of Contents
- Volume
-
: hbk ISBN 9780198538493
Description
This is a comprehensive treatment of feed-forward neural networks from the perspective of statistical pattern recognition. After introducing the basic concepts of pattern recognition, the book describes techniques for modelling probability density functions, and discusses the properties and relative merits of the multi-layer perceptron and radial basis function network models. It also motivates the use of various forms of error functions, and reviews the principal algorithms for error function minimization. As well as providing a detailed discussion of learning and generalization in neural networks, the book also covers the topics of data processing, feature extraction and prior knowledge. The book concludes with an extensive treatment of Bayesian techniques and their applications to neural networks.
Table of Contents
- Statistical pattern recognition
- Probability density estimation
- Single-layer networks
- The multi-layer perceptron
- Radial basis functions
- Error
- Parameter optimization algorithms
- Pre-processing and feature extraction
- Learning and generalization
- Bayesian techniques.
- Volume
-
: pbk ISBN 9780198538646
Description
This book provides the first comprehensive treatment of feed-forward neural networks from the perspective of statistical pattern recognition. After introducing the basic concepts of pattern recognition, the book describes techniques for modelling probability density functions, and discusses the properties and relative merits of the multi-layer perceptron and radial basis function network models. It also motivates the use of various forms of error functions, and
reviews the principal algorithms for error function minimization. As well as providing a detailed discussion of learning and generalization in neural networks, the book also covers the important topics of data processing, feature extraction, and prior knowledge. The book concludes with an extensive
treatment of Bayesian techniques and their applications to neural networks.
Table of Contents
- 1. Statistical pattern recognition
- 2. Probability density estimation
- 3. Single-layer networks
- 4. The multi-layer perceptron
- 5. Radial basis functions
- 6. Error functions
- 7. Parameter optimization algorithms
- 8. Pre-processing and feature extraction
- 9. Learning and generalization
- 10. Bayesian techniques
by "Nielsen BookData"