Adaptive Dimension Reduction to Accelerate Infinite-Dimensional Geometric Markov Chain Monte Carlo
Shiwei Lan

TL;DR
This paper introduces an adaptive dimension reduction approach to accelerate infinite-dimensional geometric MCMC algorithms, significantly improving computational efficiency in Bayesian inverse problems by leveraging intrinsic subspace structures.
Contribution
It proposes a novel adaptive dimension reduction technique using spectral decomposition to enhance infinite-dimensional geometric MCMC methods, achieving substantial speed-ups.
Findings
Over 70 times speed-up compared to pCN in simulations
Effective identification of intrinsic subspace via spectral decomposition
Error bounds provided for various MCMC proposals
Abstract
Bayesian inverse problems highly rely on efficient and effective inference methods for uncertainty quantification (UQ). Infinite-dimensional MCMC algorithms, directly defined on function spaces, are robust under refinement of physical models. Recent development of this class of algorithms has started to incorporate the geometry of the posterior informed by data so that they are capable of exploring complex probability structures. However, the required geometric quantities are usually expensive to obtain in high dimensions. On the other hand, most geometric information of the unknown parameter space in this setting is concentrated in an \emph{intrinsic} finite-dimensional subspace. To mitigate the computational intensity and scale up the applications of infinite-dimensional geometric MCMC (-GMC), we apply geometry-informed algorithms to the intrinsic subspace to probe its complex…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
