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Spatiotemporal blocking of the bouncy particle sampler for efficient inference in state-space models

机译:用于高效推论的状态空间模型的时空堵塞

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摘要

We propose a novel blocked version of the continuous-time bouncy particle sampler of Bouchard-Cote et al. (J Am Stat Assoc 113(522):855-867, 2018) which is applicable to any differentiable probability density. This alternative implementation is motivated by blocked Gibbs sampling for state-space models (Singh et al. in Biometrika 104(4):953-969, 2017) and leads to significant improvement in terms of effective sample size per second, and furthermore, allows for significant parallelization of the resulting algorithm. The new algorithms are particularly efficient for latent state inference in high-dimensional state-space models, where blocking in both space and time is necessary to avoid degeneracy of MCMC. The efficiency of our blocked bouncy particle sampler, in comparison with both the standard implementation of the bouncy particle sampler and the particle Gibbs algorithm of Andrieu et al. (J R Stat Soc Ser B Stat Methodol 72(3):269-342, 2010), is illustrated numerically for both simulated data and a challenging real-world financial dataset.
机译:我们提出了一款新颖的封闭版本的Boudard-Cote等人的连续时间混合粒子采样器。 (J AM STAT 113(522):855-867,2018),适用于任何可分辨率的概率密度。这种替代实施是通过阻塞GIBBS采样的替代实现,用于状态空间模型(Singh等人。在Biometrika 104(4):953-969,2017中),并在每秒的有效样本尺寸方面产生显着改善,而且还可以允许对于所得算法的显着并行化。新算法对于高维状态空间模型的潜在推断特别有效,其中在两个空间和时间内阻塞是必要的,以避免MCMC的退化。与Andrieu等人的标准实施相比,我们阻塞的弹性粒子采样器的效率与Andrieu等人的标准实施相比。 (J R Stat Soc Ser B STAT Modol 72(3):269-342,2010),用于模拟数据和一个具有挑战性的现实世界金融数据集。

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