Foundations of wavelet networks and applications
Author(s)
Bibliographic Information
Foundations of wavelet networks and applications
Chapman & Hall/CRC, c2002
Available at 24 libraries
  Aomori
  Iwate
  Miyagi
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Note
Bibliography: p. 225-253
Includes index
Description and Table of Contents
Description
Traditionally, neural networks and wavelet theory have been two separate disciplines, taught separately and practiced separately. In recent years the offspring of wavelet theory and neural networks-wavelet networks-have emerged and grown vigorously both in research and applications. Yet the material needed to learn or teach wavelet networks has remained scattered in various research monographs.
Foundations of Wavelet Networks and Applications unites these two fields in a comprehensive, integrated presentation of wavelets and neural networks. It begins by building a foundation, including the necessary mathematics. A transitional chapter on recurrent learning then leads to an in-depth look at wavelet networks in practice, examining important applications that include using wavelets as stock market trading advisors, as classifiers in electroencephalographic drug detection, and as predictors of chaotic time series. The final chapter explores concept learning and approximation by wavelet networks.
The potential of wavelet networks in engineering, economics, and social science applications is rich and still growing. Foundations of Wavelet Networks and Applications prepares and inspires its readers not only to help ensure that potential is achieved, but also to open new frontiers in research and applications.
Table of Contents
PART A: Mathematical Preliminaries. Wavelets. Neural Networks. Wavelet Networks. PART B: Recurrent Learning. Separating Order from Disorder. Radial Wavelet Neural Networks. Predicting Chaotic Time Series. Concept Learning. Bibliography. Index.
by "Nielsen BookData"