9780521878265-0521878268-Fundamentals of Nonparametric Bayesian Inference (Cambridge Series in Statistical and Probabilistic Mathematics, Series Number 44)

Fundamentals of Nonparametric Bayesian Inference (Cambridge Series in Statistical and Probabilistic Mathematics, Series Number 44)

ISBN-13: 9780521878265
ISBN-10: 0521878268
Edition: 1
Author: Aad van der vaart, Subhashis Ghosal
Publication date: 2017
Publisher: Cambridge University Press
Format: Hardcover 670 pages
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ISBN-13: 9780521878265
ISBN-10: 0521878268
Edition: 1
Author: Aad van der vaart, Subhashis Ghosal
Publication date: 2017
Publisher: Cambridge University Press
Format: Hardcover 670 pages

Summary

Fundamentals of Nonparametric Bayesian Inference (Cambridge Series in Statistical and Probabilistic Mathematics, Series Number 44) (ISBN-13: 9780521878265 and ISBN-10: 0521878268), written by authors Aad van der vaart, Subhashis Ghosal, was published by Cambridge University Press in 2017. With an overall rating of 4.5 stars, it's a notable title among other Applied (Mathematics) books. You can easily purchase or rent Fundamentals of Nonparametric Bayesian Inference (Cambridge Series in Statistical and Probabilistic Mathematics, Series Number 44) (Hardcover) from BooksRun, along with many other new and used Applied books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $22.3.

Description

Explosive growth in computing power has made Bayesian methods for infinite-dimensional models - Bayesian nonparametrics - a nearly universal framework for inference, finding practical use in numerous subject areas. Written by leading researchers, this authoritative text draws on theoretical advances of the past twenty years to synthesize all aspects of Bayesian nonparametrics, from prior construction to computation and large sample behavior of posteriors. Because understanding the behavior of posteriors is critical to selecting priors that work, the large sample theory is developed systematically, illustrated by various examples of model and prior combinations. Precise sufficient conditions are given, with complete proofs, that ensure desirable posterior properties and behavior. Each chapter ends with historical notes and numerous exercises to deepen and consolidate the reader's understanding, making the book valuable for both graduate students and researchers in statistics and machine learning, as well as in application areas such as econometrics and biostatistics.

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