Markov Chain Monte Carlo

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A01=Dani Gamerman
A01=Hedibert F. Lopes
A01=Hedibert Freita Lopes
Acceptance Probability
advanced Bayesian simulation techniques
Author_Dani Gamerman
Author_Hedibert F. Lopes
Author_Hedibert Freita Lopes
Bayes Factor
Bayesian computational methods
biostatistics applications
Category=PBT
conditional
Credibility Interval
densities
distribution
distributions
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
Ergodic Averages
full
Full Conditional
Full Conditional Distributions
Full Conditional Posterior Distribution
gibbs
Gibbs Sampling
High Posterior Model Probabilities
Independence Chains
INDM
IRLS Algorithm
kernel
Markov Chain
MC
MCMC Algorithm
MCMC Method
MCMC Scheme
Metropolis Hastings Algorithm
Positive Recurrent
posterior
Posterior Distribution
Proposal Kernel
R programming statistics
Random Walk Metropolis
Random Walk Metropolis Algorithm
reversible jump sampling
sampler
spatial statistical analysis
statistical modelling techniques
transition
Transition Kernel
Weighted Resampling

Product details

  • ISBN 9781584885870
  • Weight: 780g
  • Dimensions: 156 x 234mm
  • Publication Date: 10 May 2006
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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While there have been few theoretical contributions on the Markov Chain Monte Carlo (MCMC) methods in the past decade, current understanding and application of MCMC to the solution of inference problems has increased by leaps and bounds. Incorporating changes in theory and highlighting new applications, Markov Chain Monte Carlo: Stochastic Simulation for Bayesian Inference, Second Edition presents a concise, accessible, and comprehensive introduction to the methods of this valuable simulation technique. The second edition includes access to an internet site that provides the code, written in R and WinBUGS, used in many of the previously existing and new examples and exercises. More importantly, the self-explanatory nature of the codes will enable modification of the inputs to the codes and variation on many directions will be available for further exploration.

Major changes from the previous edition:

· More examples with discussion of computational details in chapters on Gibbs sampling and Metropolis-Hastings algorithms

· Recent developments in MCMC, including reversible jump, slice sampling, bridge sampling, path sampling, multiple-try, and delayed rejection

· Discussion of computation using both R and WinBUGS

· Additional exercises and selected solutions within the text, with all data sets and software available for download from the Web

· Sections on spatial models and model adequacy

The self-contained text units make MCMC accessible to scientists in other disciplines as well as statisticians. The book will appeal to everyone working with MCMC techniques, especially research and graduate statisticians and biostatisticians, and scientists handling data and formulating models. The book has been substantially reinforced as a first reading of material on MCMC and, consequently, as a textbook for modern Bayesian computation and Bayesian inference courses.

Dani Gamerman, Hedibert F. Lopes

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