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  • 标题:Merging MCMC Subposteriors through Gaussian-Process Approximations
  • 本地全文:下载
  • 作者:Christopher Nemeth ; Chris Sherlock
  • 期刊名称:Bayesian Analysis
  • 印刷版ISSN:1931-6690
  • 电子版ISSN:1936-0975
  • 出版年度:2018
  • 卷号:13
  • 期号:2
  • 页码:507-530
  • DOI:10.1214/17-BA1063
  • 语种:English
  • 出版社:International Society for Bayesian Analysis
  • 摘要:Markov chain Monte Carlo (MCMC) algorithms have become powerful tools for Bayesian inference. However, they do not scale well to large-data problems. Divide-and-conquer strategies, which split the data into batches and, for each batch, run independent MCMC algorithms targeting the corresponding subposterior, can spread the computational burden across a number of separate computer cores. The challenge with such strategies is in recombining the subposteriors to approximate the full posterior. By creating a Gaussian-process approximation for each log-subposterior density we create a tractable approximation for the full posterior. This approximation is exploited through three methodologies: firstly a Hamiltonian Monte Carlo algorithm targeting the expectation of the posterior density provides a sample from an approximation to the posterior; secondly, evaluating the true posterior at the sampled points leads to an importance sampler that, asymptotically, targets the true posterior expectations; finally, an alternative importance sampler uses the full Gaussian-process distribution of the approximation to the log-posterior density to re-weight any initial sample and provide both an estimate of the posterior expectation and a measure of the uncertainty in it.
  • 关键词:big data; Markov chain Monte Carlo; Gaussian processes; distributed importance sampling.
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