2022
DOI: 10.48550/arxiv.2202.02264
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De-Sequentialized Monte Carlo: a parallel-in-time particle smoother

Abstract: Particle smoothers are SMC (Sequential Monte Carlo) algorithms designed to approximate the joint distribution of the states given observations from a state-space model. We propose dSMC (de-Sequentialized Monte Carlo), a new particle smoother that is able to process T observations in O(log T ) time on parallel architecture. This compares favourably with standard particle smoothers, the complexity of which is linear in T . We derive Lp convergence results for dSMC, with an explicit upper bound, polynomial in T .… Show more

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