Chapman & Hall

Markov chain Monte Carlo in practice

作者:
Mauro Gasparini

关键词:
Markov processes

摘要:
Markov chain Monte Carlo (MCMC) methods use computer simulation of Markov chains in the parameter space. The Markov chains are defined in such a way that the posterior distribution in the given statistical inference problem is the asymptotic distribution. This allows to use ergodic averages to approximate the desired posterior expectations. Several standard approaches to define such Markov chains exist, including Gibbs sampling, Metropolis鈥揌astings, and reversible jump. Using these algorithms it is possible to implement posterior simulation in essentially any problem which allows pointwise evaluation of the prior distribution and likelihood function.

在线下载

相关文章:
在线客服:
对外合作:
联系方式:400-6379-560
投诉建议:feedback@hanspub.org
客服号

人工客服,优惠资讯,稿件咨询
公众号

科技前沿与学术知识分享