条件顺序蒙特卡罗在高维

Axel Finke, Alexandre Hoang Thiery
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引用次数: 2

摘要

Andrieu, Doucet和Holenstein(2010)提出的迭代条件序列蒙特卡罗(i-CSMC)算法是一种MCMC方法,用于在具有挑战性的时间序列模型(例如非线性或非高斯状态空间模型)中有效地从$T$潜在状态的联合后验分布中采样。它也是粒子吉布斯采样器的主要成分,它可以推断出未知的模型参数以及潜在状态。在这项工作中,我们首先证明了i-CSMC算法在状态维度中遭受维度诅咒$D$:除非算法提出的样本(“粒子”)数量$N$随$D$呈指数增长,否则它会崩溃。然后,我们提出了一种新的“局部”版本的算法,该算法使用高斯随机行走移动来提出粒子,该移动适当地缩放$D$。我们证明了这种迭代随机漫步条件序列蒙特卡罗(i-RW-CSMC)算法避免了维数诅咒:对于任意$N$,它的接受率和期望的平方跳跃距离收敛于非平凡极限$D \to \infty$。如果$T = N = 1$,我们提出的算法减少到一个Metropolis- Hastings或Barker的算法与高斯随机行走移动,我们恢复了众所周知的缩放限制的算法。
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Conditional sequential Monte Carlo in high dimensions
The iterated conditional sequential Monte Carlo (i-CSMC) algorithm from Andrieu, Doucet and Holenstein (2010) is an MCMC approach for efficiently sampling from the joint posterior distribution of the $T$ latent states in challenging time-series models, e.g. in non-linear or non-Gaussian state-space models. It is also the main ingredient in particle Gibbs samplers which infer unknown model parameters alongside the latent states. In this work, we first prove that the i-CSMC algorithm suffers from a curse of dimension in the dimension of the states, $D$: it breaks down unless the number of samples ("particles"), $N$, proposed by the algorithm grows exponentially with $D$. Then, we present a novel"local"version of the algorithm which proposes particles using Gaussian random-walk moves that are suitably scaled with $D$. We prove that this iterated random-walk conditional sequential Monte Carlo (i-RW-CSMC) algorithm avoids the curse of dimension: for arbitrary $N$, its acceptance rates and expected squared jumping distance converge to non-trivial limits as $D \to \infty$. If $T = N = 1$, our proposed algorithm reduces to a Metropolis--Hastings or Barker's algorithm with Gaussian random-walk moves and we recover the well known scaling limits for such algorithms.
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