Wavelets in Functional Data Analysis (SpringerBriefs in Mathematics) Papeback -
by PEDRO A. MORETTIN
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Details
- Title Wavelets in Functional Data Analysis (SpringerBriefs in Mathematics)
- Author PEDRO A. MORETTIN
- Binding Papeback
- Condition New
- Language ENG
- Publisher Springer
- Publication date pp. 114
- Features Illustrated
- Bookseller's Inventory # 6378296766
- ISBN 9783319596228
- Quantity available 4
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From the publisher
From the rear cover
Wavelet-based procedures are key in many areas of statistics, applied mathematics, engineering, and science. This book presents wavelets in functional data analysis, offering a glimpse of problems in which they can be applied, including tumor analysis, functional magnetic resonance and meteorological data. Starting with the Haar wavelet, the authors explore myriad families of wavelets and how they can be used. High-dimensional data visualization (using Andrews' plots), wavelet shrinkage (a simple, yet powerful, procedure for nonparametric models) and a selection of estimation and testing techniques (including a discussion on Stein's Paradox) make this a highly valuable resource for graduate students and experienced researchers alike.