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Advanced Markov chain Monte Carlo methods: learning from past samples

This book provides comprehensive coverage of simulation of complex systems using Monte Carlo methods. Developing algorithms that are immune to the local trap problem has long been considered as the most important topic in MCMC research. Various advanced MCMC algorithms which address this problem hav...

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Detalles Bibliográficos
Autores principales: Liang, Faming, Liu, Chuanhai, Carrol, Raymond J
Lenguaje:eng
Publicado: Wiley 2010
Materias:
Acceso en línea:http://cds.cern.ch/record/1271092
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author Liang, Faming
Liu, Chuanhai
Carrol, Raymond J
author_facet Liang, Faming
Liu, Chuanhai
Carrol, Raymond J
author_sort Liang, Faming
collection CERN
description This book provides comprehensive coverage of simulation of complex systems using Monte Carlo methods. Developing algorithms that are immune to the local trap problem has long been considered as the most important topic in MCMC research. Various advanced MCMC algorithms which address this problem have been developed include, the modified Gibbs sampler, the methods based on auxiliary variables and the methods making use of past samples. The focus of this book is on the algorithms that make use of past samples. This book includes the multicanonical algorithm, dynamic weighting, dynamically weight
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2010
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spelling cern-12710922021-04-22T01:17:28Zhttp://cds.cern.ch/record/1271092engLiang, FamingLiu, ChuanhaiCarrol, Raymond JAdvanced Markov chain Monte Carlo methods: learning from past samplesComputing and ComputersMathematical Physics and Mathematics This book provides comprehensive coverage of simulation of complex systems using Monte Carlo methods. Developing algorithms that are immune to the local trap problem has long been considered as the most important topic in MCMC research. Various advanced MCMC algorithms which address this problem have been developed include, the modified Gibbs sampler, the methods based on auxiliary variables and the methods making use of past samples. The focus of this book is on the algorithms that make use of past samples. This book includes the multicanonical algorithm, dynamic weighting, dynamically weightWileyoai:cds.cern.ch:12710922010
spellingShingle Computing and Computers
Mathematical Physics and Mathematics
Liang, Faming
Liu, Chuanhai
Carrol, Raymond J
Advanced Markov chain Monte Carlo methods: learning from past samples
title Advanced Markov chain Monte Carlo methods: learning from past samples
title_full Advanced Markov chain Monte Carlo methods: learning from past samples
title_fullStr Advanced Markov chain Monte Carlo methods: learning from past samples
title_full_unstemmed Advanced Markov chain Monte Carlo methods: learning from past samples
title_short Advanced Markov chain Monte Carlo methods: learning from past samples
title_sort advanced markov chain monte carlo methods: learning from past samples
topic Computing and Computers
Mathematical Physics and Mathematics
url http://cds.cern.ch/record/1271092
work_keys_str_mv AT liangfaming advancedmarkovchainmontecarlomethodslearningfrompastsamples
AT liuchuanhai advancedmarkovchainmontecarlomethodslearningfrompastsamples
AT carrolraymondj advancedmarkovchainmontecarlomethodslearningfrompastsamples