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Bayesian Inference in Wavelet-Based Models Softcover Repri Edition
Contributor(s): Müller, Peter (Editor), Vidakovic, Brani (Editor)
ISBN: 0387988858     ISBN-13: 9780387988856
Publisher: Springer
OUR PRICE:   $104.49  
Product Type: Paperback
Published: June 1999
Qty:
Annotation: This volume provides a thorough introduction and reference for any researcher who is interested in Bayesian inference for wavelet-based models, but is not necessarily an expert in either. To achieve this goal the book starts with an extensive introductory chapter providing a self-contained introduction to the use of wavelet decompositions and the relation to Bayesian inference. The remaining papers in this volume are divided into six parts: independent prior modeling; decision theoretic aspects; dependent prior modeling; spatial models using bivariate wavelet bases; empirical Bayes approaches; and case studies. Chapters are written by experts who published the original research papers establishing the use of wavelet-based models in Bayesian inference. Peter M??ller is Associate Professor and Brani Vidakovic is Assistant Professor of Statistics at Duke University.
Additional Information
BISAC Categories:
- Gardening
- Mathematics | Probability & Statistics - General
- Medical
Dewey: 519.542
LCCN: 99023872
Series: Lecture Notes in Statistics
Physical Information: 0.85" H x 6.14" W x 9.21" (1.28 lbs) 396 pages
 
Descriptions, Reviews, Etc.
Publisher Description:
This volume presents an overview of Bayesian methods for inference in the wavelet domain. The papers in this volume are divided into six parts: The first two papers introduce basic concepts. Chapters in Part II explore different approaches to prior modeling, using independent priors. Papers in the Part III discuss decision theoretic aspects of such prior models. In Part IV, some aspects of prior modeling using priors that account for dependence are explored. Part V considers the use of 2-dimensional wavelet decomposition in spatial modeling. Chapters in Part VI discuss the use of empirical Bayes estimation in wavelet based models. Part VII concludes the volume with a discussion of case studies using wavelet based Bayesian approaches. The cooperation of all contributors in the timely preparation of their manuscripts is greatly recognized. We decided early on that it was impor- tant to referee and critically evaluate the papers which were submitted for inclusion in this volume. For this substantial task, we relied on the service of numerous referees to whom we are most indebted. We are also grateful to John Kimmel and the Springer-Verlag referees for considering our proposal in a very timely manner. Our special thanks go to our spouses, Gautami and Draga, for their support.