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Fast and Numerically Stable Particle-Based Online Additive Smoothing: The AdaSmooth Algorithm

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Taylor & Francis Group2022-10-11 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/Fast_and_numerically_stable_particle-based_online_additive_smoothing_the_AdaSmooth_algorithm/21033197/2
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We present a novel sequential Monte Carlo approach to online smoothing of additive functionals in a very general class of path-space models. Hitherto, the solutions proposed in the literature suffer from either long-term numerical instability due to particle-path degeneracy or, in the case that degeneracy is remedied by particle approximation of the so-called backward kernel, high computational demands. In order to balance optimally computational speed against numerical stability, we propose to furnish a (fast) naive particle smoother, propagating recursively a sample of particles and associated smoothing statistics, with an adaptive backward-sampling-based updating rule which allows the number of (costly) backward samples to be kept at a minimum. This yields a new, function-specific additive smoothing algorithm, AdaSmooth, which is computationally fast, numerically stable and easy to implement. The algorithm is provided with rigorous theoretical results guaranteeing its consistency, asymptotic normality and long-term stability as well as numerical results demonstrating empirically the clear superiority of AdaSmooth to existing algorithms. Supplementary materials for this article are available online.
提供机构:
Olsson, Jimmy; Alenlöv, Johan; Mastrototaro, Alessandro
创建时间:
2022-10-11
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