Online Rolling Controlled Sequential Monte Carlo
Online Rolling Controlled Sequential Monte Carlo
We introduce methodology for real-time inference in general-state-space hidden Markov models. Specifically, we extend recent advances in controlled sequential Monte Carlo (CSMC) methods-originally proposed for offline smoothing-to the online setting via a rolling window mechanism. Our novel online rolling controlled sequential Monte Carlo (ORCSMC) algorithm employs two particle systems to simultaneously estimate twisting functions and perform filtering, ensuring real-time adaptivity to new observations while maintaining bounded computational cost. Numerical results on linear-Gaussian, stochastic volatility, and neuroscience models demonstrate improved estimation accuracy and robustness in higher dimensions, compared to standard particle filtering approaches. The method offers a statistically efficient and practical solution for sequential and real-time inference in complex latent variable models.
Liwen Xue、Axel Finke、Adam M. Johansen
计算技术、计算机技术
Liwen Xue,Axel Finke,Adam M. Johansen.Online Rolling Controlled Sequential Monte Carlo[EB/OL].(2025-08-01)[2025-08-11].https://arxiv.org/abs/2508.00696.点此复制
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