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Kalman-Langevin dynamics : exponential convergence, particle approximation and numerical approximation

Kalman-Langevin dynamics : exponential convergence, particle approximation and numerical approximation

来源:Arxiv_logoArxiv
英文摘要

Langevin dynamics has found a large number of applications in sampling, optimization and estimation. Preconditioning the gradient in the dynamics with the covariance - an idea that originated in literature related to solving estimation and inverse problems using Kalman techniques - results in a mean-field (McKean-Vlasov) SDE. We demonstrate exponential convergence of the time marginal law of the mean-field SDE to the Gibbs measure with non-Gaussian potentials. This extends previous results, obtained in the Gaussian setting, to a broader class of potential functions. We also establish uniform in time bounds on all moments and convergence in $p$-Wasserstein distance. Furthermore, we show convergence of a weak particle approximation, that avoids computing the square root of the empirical covariance matrix, to the mean-field limit. Finally, we prove that an explicit numerical scheme for approximating the particle dynamics converges, uniformly in number of particles, to its continuous-time limit, addressing non-global Lipschitzness in the measure.

Axel Ringh、Akash Sharma

数学

Axel Ringh,Akash Sharma.Kalman-Langevin dynamics : exponential convergence, particle approximation and numerical approximation[EB/OL].(2025-04-25)[2025-06-27].https://arxiv.org/abs/2504.18139.点此复制

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