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Parallel algorithms for Markov chain Monte Carlo methods in latent spatial Gaussian models

机译:潜在空间高斯模型中马尔可夫链蒙特卡罗方法的并行算法

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摘要

Markov chain Monte Carlo (MCMC) implementations of Bayesian inference for latent spatial Gaussian models are very computationally intensive, and restrictions on storage and computation time are limiting their application to large problems. Here we propose various parallel MCMC algorithms for such models. The algorithms' performance is discussed with respect to a simulation study, which demonstrates the increase in speed with which the algorithms explore the posterior distribution as a function of the number of processors. We also discuss how feasible problem size is increased by use of these algorithms.
机译:潜在空间高斯模型的贝叶斯推断的马尔可夫链蒙特卡洛(MCMC)实现在计算上非常密集,并且对存储和计算时间的限制将它们的应用限制在大问题上。在这里,我们为此类模型提出了多种并行MCMC算法。结合仿真研究讨论了算法的性能,仿真研究表明算法探索后验分布与处理器数量的函数关系的速度有所提高。我们还将讨论如何通过使用这些算法来增加可行的问题大小。

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