English

Propagating Surrogate Uncertainty in Bayesian Inverse Problems

Methodology 2026-01-09 v2 Computation

Abstract

Standard Bayesian inference schemes are infeasible for inverse problems with computationally expensive forward models. A common solution is to replace the model with a cheaper surrogate. To avoid overconfident conclusions, it is essential to acknowledge the surrogate approximation by propagating its uncertainty. At present, a variety of distinct uncertainty propagation methods have been suggested, with little understanding of how they vary. To fill this gap, we propose a mixture distribution termed the expected posterior (EP) as a general baseline for uncertainty-aware posterior approximation, justified by decision theoretic and modular Bayesian inference arguments. We then investigate the expected unnormalized posterior (EUP), a popular heuristic alternative, analyzing when it may deviate from the EP baseline. Our results show that this heuristic can break down when the surrogate uncertainty is highly non-uniform over the design space, as can be the case when the log-likelihood is emulated by a Gaussian process. Finally, we present the random kernel preconditioned Crank-Nicolson (RKpCN) algorithm, an approximate Markov chain Monte Carlo scheme that provides practical EP approximation in the challenging setting involving infinite-dimensional Gaussian process surrogates.

Keywords

Cite

@article{arxiv.2601.03532,
  title  = {Propagating Surrogate Uncertainty in Bayesian Inverse Problems},
  author = {Andrew Gerard Roberts and Michael Dietze and Jonathan H. Huggins},
  journal= {arXiv preprint arXiv:2601.03532},
  year   = {2026}
}
R2 v1 2026-07-01T08:53:37.803Z