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Advanced Markov Chain Monte Carlo Methods Learning From Past Samples Wiley Series In Computational Statistics 1st Edition Faming Liang

  • SKU: BELL-2541276
Advanced Markov Chain Monte Carlo Methods Learning From Past Samples Wiley Series In Computational Statistics 1st Edition Faming Liang
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Advanced Markov Chain Monte Carlo Methods Learning From Past Samples Wiley Series In Computational Statistics 1st Edition Faming Liang instant download after payment.

Publisher: Wiley
File Extension: PDF
File size: 3.11 MB
Pages: 374
Author: Faming Liang, Chuanhai Liu, Raymond Carroll
ISBN: 9780470748268, 9780470669730, 0470748265, 047066973X
Language: English
Year: 2010
Edition: 1

Product desciption

Advanced Markov Chain Monte Carlo Methods Learning From Past Samples Wiley Series In Computational Statistics 1st Edition Faming Liang by Faming Liang, Chuanhai Liu, Raymond Carroll 9780470748268, 9780470669730, 0470748265, 047066973X instant download after payment.

Markov Chain Monte Carlo (MCMC) methods are now an indispensable tool in scientific computing. This book discusses recent developments of MCMC methods with an emphasis on those making use of past sample information during simulations. The application examples are drawn from diverse fields such as bioinformatics, machine learning, social science, combinatorial optimization, and computational physics.Key Features:Expanded coverage of the stochastic approximation Monte Carlo and dynamic weighting algorithms that are essentially immune to local trap problems.A detailed discussion of the Monte Carlo Metropolis-Hastings algorithm that can be used for sampling from distributions with intractable normalizing constants.Up-to-date accounts of recent developments of the Gibbs sampler.Comprehensive overviews of the population-based MCMC algorithms and the MCMC algorithms with adaptive proposals.This book can be used as a textbook or a reference book for a one-semester graduate course in statistics, computational biology, engineering, and computer sciences. Applied or theoretical researchers will also find this book beneficial.

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