延迟接受加速Metropolis-Hastings算法

IF 1.7 Q2 MATHEMATICS, APPLIED Foundations of data science (Springfield, Mo.) Pub Date : 2015-03-03 DOI:10.3934/FODS.2019005
Marco Banterle, C. Grazian, Anthony Lee, C. Robert
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引用次数: 50

摘要

以大型数据集为例,Metropolis-Hastings算法等MCMC算法由于计算复杂的目标分布而速度变慢。我们在本文中提供了延迟接受方法的一个有用的推广,旨在通过一个简单而通用的分治策略来降低此类算法的计算成本。通用加速背后的思想是将验收步骤分成几个部分,旨在大大减少计算时间,从而超过相应的验收概率减少。每个组成部分可以依次与一个统一的变量进行比较,第一次拒绝表明建议的值不再被考虑。此外,我们还根据标准Metropolis-Hastings的方差给出了相关估计量方差的理论界限,并详细介绍了该过程的最优标度和一般优化的一些结果。我们通过一系列示例来说明这些加速特性
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Accelerating Metropolis-Hastings algorithms by Delayed Acceptance
MCMC algorithms such as Metropolis-Hastings algorithms are slowed down by the computation of complex target distributions as exemplified by huge datasets. We offer in this paper a useful generalisation of the Delayed Acceptance approach, devised to reduce the computational costs of such algorithms by a simple and universal divide-and-conquer strategy. The idea behind the generic acceleration is to divide the acceptance step into several parts, aiming at a major reduction in computing time that out-ranks the corresponding reduction in acceptance probability. Each of the components can be sequentially compared with a uniform variate, the first rejection signalling that the proposed value is considered no further. We develop moreover theoretical bounds for the variance of associated estimators with respect to the variance of the standard Metropolis-Hastings and detail some results on optimal scaling and general optimisation of the procedure. We illustrate those accelerating features on a series of examples
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