Geometric adaptive Monte Carlo in random environment

IF 1.7 Q2 MATHEMATICS, APPLIED Foundations of data science (Springfield, Mo.) Pub Date : 2016-08-29 DOI:10.3934/FODS.2021014
T. Papamarkou, Alexey Lindo, E. Ford
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引用次数: 3

Abstract

Manifold Markov chain Monte Carlo algorithms have been introduced to sample more effectively from challenging target densities exhibiting multiple modes or strong correlations. Such algorithms exploit the local geometry of the parameter space, thus enabling chains to achieve a faster convergence rate when measured in number of steps. However, acquiring local geometric information can often increase computational complexity per step to the extent that sampling from high-dimensional targets becomes inefficient in terms of total computational time. This paper analyzes the computational complexity of manifold Langevin Monte Carlo and proposes a geometric adaptive Monte Carlo sampler aimed at balancing the benefits of exploiting local geometry with computational cost to achieve a high effective sample size for a given computational cost. The suggested sampler is a discrete-time stochastic process in random environment. The random environment allows to switch between local geometric and adaptive proposal kernels with the help of a schedule. An exponential schedule is put forward that enables more frequent use of geometric information in early transient phases of the chain, while saving computational time in late stationary phases. The average complexity can be manually set depending on the need for geometric exploitation posed by the underlying model.
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随机环境下的几何自适应蒙特卡罗算法
引入了流形马尔可夫链蒙特卡罗算法,从具有挑战性的目标密度中更有效地采样,显示出多模式或强相关性。这种算法利用参数空间的局部几何,从而使链在以步数测量时达到更快的收敛速度。然而,获取局部几何信息通常会增加每一步的计算复杂度,以至于从高维目标进行采样在总计算时间方面变得低效。本文分析了流形朗格万蒙特卡罗的计算复杂度,提出了一种几何自适应蒙特卡罗采样器,旨在平衡利用局部几何的好处和计算成本,在给定计算成本的情况下获得高有效样本量。所建议的采样器是随机环境下的离散时间随机过程。随机环境允许在调度的帮助下在局部几何和自适应建议核之间切换。提出了一种指数调度方法,可以在链的早期瞬态阶段更频繁地使用几何信息,同时节省了后期平稳阶段的计算时间。平均复杂度可以根据底层模型所提出的几何利用需求手动设置。
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