Scalable posterior approximations for large-scale Bayesian inverse problems via likelihood-informed parameter and state reduction
Tiangang Cui, Youssef M. Marzouk, Karen E. Willcox

TL;DR
This paper introduces a method for reducing the dimensionality of large-scale Bayesian inverse problems by constructing low-dimensional subspaces in both parameter and state spaces, enabling faster and more efficient posterior sampling.
Contribution
It proposes a joint subspace construction approach for parameter and state spaces, improving computational efficiency in high-dimensional Bayesian inverse problems.
Findings
Effective dimension reduction in atmospheric remote sensing inversion.
Accurate posterior approximation for groundwater transmissivity inference.
Significant speed-up in posterior sampling with maintained accuracy.
Abstract
Two major bottlenecks to the solution of large-scale Bayesian inverse problems are the scaling of posterior sampling algorithms to high-dimensional parameter spaces and the computational cost of forward model evaluations. Yet incomplete or noisy data, the state variation and parameter dependence of the forward model, and correlations in the prior collectively provide useful structure that can be exploited for dimension reduction in this setting--both in the parameter space of the inverse problem and in the state space of the forward model. To this end, we show how to jointly construct low-dimensional subspaces of the parameter space and the state space in order to accelerate the Bayesian solution of the inverse problem. As a byproduct of state dimension reduction, we also show how to identify low-dimensional subspaces of the data in problems with high-dimensional observations. These…
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