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Fractional Langevin Monte Carlo: Exploring Levy Driven Stochastic Differential Equations for Markov Chain Monte Carlo

机译:分数·朗格万·蒙特卡洛:探索马尔可夫链蒙特卡洛征税驱动的随机微分方程

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Along with the recent advances in scalable Markov Chain Monte Carlo methods, sampling techniques that are based on Langevin diffusions have started receiving increasing attention. These so called Langevin Monte Carlo (LMC) methods are based on diffusions driven by a Brownian motion, which gives rise to Gaussian proposal distributions in the resulting algorithms. Even though these approaches have proven successful in many applications, their performance can be limited by the light-tailed nature of the Gaussian proposals. In this study, we extend classical LMC and develop a novel Fractional LMC (FLMC) framework that is based on a family of heavy-tailed distributions, called alpha-stable Levy distributions. As opposed to classical approaches, the proposed approach can possess large jumps while targeting the correct distribution, which would be beneficial for efficient exploration of the state space. We develop novel computational methods that can scale up to large-scale problems and we provide formal convergence analysis of the proposed scheme. Our experiments support our theory: FLMC can provide superior performance in multi-modal settings, improved convergence rates, and robustness to algorithm parameters.
机译:随着可伸缩马尔可夫链蒙特卡罗方法的最新进展,基于兰格文扩散的采样技术开始受到越来越多的关注。这些所谓的Langevin蒙特卡洛(LMC)方法基于布朗运动驱动的扩散,这在所得算法中产生了高斯建议分布。尽管这些方法已在许多应用中证明是成功的,但它们的性能可能会受到高斯建议的轻尾特性的限制。在这项研究中,我们扩展了经典LMC并开发了一种新颖的分数LMC(FLMC)框架,该框架基于称为α稳定的Levy分布的重尾分布族。与经典方法相反,所提出的方法在针对正确的分布的同时可以具有较大的跳跃,这将有利于状态空间的有效探索。我们开发了可以扩展到大规模问题的新颖计算方法,并提供了所提出方案的形式收敛分析。我们的实验支持我们的理论:FLMC可以在多模式设置中提供出色的性能,提高的收敛速度以及对算法参数的鲁棒性。

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