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Bayesian Inference in Wavelet-Based Models
Tallenna

Bayesian Inference in Wavelet-Based Models

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 Muller is Associate Professor and Brani Vidakovic is Assistant Professor of Statistics at Duke University.
Painos
Softcover reprint of the original 1st ed. 1999
ISBN
9780387988856
Kieli
englanti
Paino
310 grammaa
Julkaisupäivä
22.6.1999
Sivumäärä
396