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Merging MCMC subposteriors through Gaussian-Process Approximations

机译:通过高斯过程近似合并MCMC后验

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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.
机译:马尔可夫链蒙特卡洛(MCMC)算法已成为贝叶斯推理的强大工具。但是,它们不能很好地解决大数据问题。分而治之的策略将数据分为多个批次,并针对每个批次运行针对相应后代的独立MCMC算法,可以将计算负担分散到多个单独的计算机核心上。这种策略的挑战在于将后后部重组为近似整个后部。通过为每个对数后验密度创建一个高斯过程近似值,我们为整个后验分布创建一个易于处理的近似值。这种近似是通过三种方法开发的:首先,针对后验密度期望的哈密顿蒙特卡罗算法提供了从近似到后验的样本;其次,在采样点评估真实后验会导致重要性采样器渐进地针对真实后验期望。最后,另一个重要性取样器使用对数后验密度近似值的完整高斯过程分布来对任何初始样本进行加权,并提供对后验期望的估计和不确定性的度量。

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