TL;DR
This paper introduces a hybrid geometric MCMC method for infinite-dimensional Bayesian inverse problems, significantly improving sampling efficiency and mixing times while maintaining computational feasibility.
Contribution
It combines geometric MCMC techniques on a finite-dimensional subspace with mesh-independent approaches to enhance efficiency in infinite-dimensional settings.
Findings
Up to 100x faster sampling compared to pCN.
Effective exploration of complex, non-Gaussian posteriors.
Demonstrated on inverse problems in subsurface flow, heat conduction, and flow control.
Abstract
Bayesian inverse problems often involve sampling posterior distributions on infinite-dimensional function spaces. Traditional Markov chain Monte Carlo (MCMC) algorithms are characterized by deteriorating mixing times upon mesh-refinement, when the finite-dimensional approximations become more accurate. Such methods are typically forced to reduce step-sizes as the discretization gets finer, and thus are expensive as a function of dimension. Recently, a new class of MCMC methods with mesh-independent convergence times has emerged. However, few of them take into account the geometry of the posterior informed by the data. At the same time, recently developed geometric MCMC algorithms have been found to be powerful in exploring complicated distributions that deviate significantly from elliptic Gaussian laws, but are in general computationally intractable for models defined in infinite…
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