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arxiv: 2411.13443 · v4 · submitted 2024-11-20 · 🧮 math.NA · cs.NA· math.OC· stat.ML

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Nonlinear Assimilation via Score-based Sequential Langevin Sampling

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classification 🧮 math.NA cs.NAmath.OCstat.ML
keywords samplingsslsassimilationerrorlangevinscore-baseddatamethod
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This paper introduces score-based sequential Langevin sampling (SSLS), a novel approach to nonlinear data assimilation within a recursive Bayesian filtering framework. The proposed method decomposes the assimilation process into alternating prediction and update steps, using dynamic models for state prediction and incorporating observational data via score-based Langevin Monte Carlo during the updates. To overcome inherent challenges in highly non-log-concave posterior sampling, we integrate an annealing strategy into the update mechanism. Theoretically, we establish convergence guarantees for SSLS in total variation (TV) distance, yielding concrete insights into the algorithm's error behavior with respect to key hyperparameters. Crucially, our derived error bounds demonstrate the asymptotic stability of SSLS, guaranteeing that local posterior sampling errors do not accumulate indefinitely over time. Extensive numerical experiments across challenging scenarios, including high-dimensional systems, strong nonlinearity, and sparse observations, highlight the robust performance of the proposed method. Furthermore, SSLS effectively quantifies the uncertainty associated with state estimates, rendering it particularly valuable for reliable error calibration.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Rethinking Forward Processes for Score-Based Data Assimilation in High Dimensions

    stat.ML 2026-04 unverdicted novelty 6.0

    A measurement-aware forward process for score-based data assimilation yields an exact likelihood score for linear measurements by construction.