Bayesian Statistics is the school of thought that combines prior
beliefs with the likelihood of a hypothesis to arrive at posterior
beliefs. The first edition of Peter Lee’s book appeared in 1989, but
the subject has moved ever onwards, with increasing emphasis on Monte
Carlo based techniques. This new fourth edition looks at recent
techniques such as variational methods, Bayesian importance sampling,
approximate Bayesian computation and Reversible Jump Markov Chain
Monte Carlo (RJMCMC), providing a concise account of the way in which
the Bayesian approach to statistics develops as well as how it
contrasts with the conventional approach. The theory is built up step
by step, and important notions such as sufficiency are brought out of
a discussion of the salient features of specific examples. This
edition: Includes expanded coverage of Gibbs sampling, including more
numerical examples and treatments of OpenBUGS, R2WinBUGS and
R2OpenBUGS. Presents significant new material on recent techniques
such as Bayesian importance sampling, variational Bayes, Approximate
Bayesian Computation (ABC) and Reversible Jump Markov Chain Monte
Carlo (RJMCMC). Provides extensive examples throughout the book to
complement the theory presented. Accompanied by a supporting website
featuring new material and solutions. More and more students are
realizing that they need to learn Bayesian statistics to meet their
academic and professional goals. This book is best suited for use as a
main text in courses on Bayesian statistics for third and fourth year
undergraduates and postgraduate students.
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An Introduction
Produktdetaljer
ISBN
9781118359778
Publisert
2014
Utgave
4. utgave
Utgiver
Vendor
Wiley-Blackwell
Språk
Product language
Engelsk
Format
Product format
Digital bok
Antall sider
488
Forfatter