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Markov chain Monte Carlo algorithms with sequential proposals

机译:Markov Chain Monte Carlo算法与顺序提案

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摘要

We explore a general framework in Markov chain Monte Carlo (MCMC) sampling where sequential proposals are tried as a candidate for the next state of the Markov chain. This sequential-proposal framework can be applied to various existing MCMC methods, including Metropolis-Hastings algorithms using random proposals and methods that use deterministic proposals such as Hamiltonian Monte Carlo (HMC) or the bouncy particle sampler. Sequential-proposal MCMC methods construct the same Markov chains as those constructed by the delayed rejection method under certain circumstances. In the context of HMC, the sequential-proposal approach has been proposed as extra chance generalized hybrid Monte Carlo (XCGHMC). We develop two novel methods in which the trajectories leading to proposals in HMC are automatically tuned to avoid doubling back, as in the No-U-Turn sampler (NUTS). The numerical efficiency of these new methods compare favorably to the NUTS. We additionally show that the sequential-proposal bouncy particle sampler enables the constructed Markov chain to pass through regions of low target density and thus facilitates better mixing of the chain when the target density is multimodal.
机译:我们探索马尔可夫链蒙特卡罗(MCMC)采样的一般框架,其中续定提案作为马尔可夫链的下一个州的候选人。该顺序提议框架可以应用于各种现有的MCMC方法,包括使用使用确定性建议的随机提案和方法,包括哈密顿蒙特卡罗(HMC)或Bouncy粒子采样器的随机提案和方法。顺序提议MCMC方法将相同的Markov链构造为在某些情况下由延迟抑制方法构成的链条。在HMC的背景下,已经提出了顺序建议方法作为额外机会通用混合蒙特卡罗(XCGHMC)。我们开发了两种新方法,其中导致HMC中提案的轨迹自动调整,以避免加倍,如No-U形采样器(螺母)中。这些新方法的数值效率对螺母有利比较。我们还表明,顺序 - 提议的弹性粒子采样器使构建的马尔可夫链能够通过低目标密度的区域,从而有助于当目标密度是多峰时更好地混合链。

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