English

Prediction-Centric Uncertainty Quantification via MMD

Methodology 2025-03-24 v2

Abstract

Deterministic mathematical models, such as those specified via differential equations, are a powerful tool to communicate scientific insight. However, such models are necessarily simplified descriptions of the real world. Generalised Bayesian methodologies have been proposed for inference with misspecified models, but these are typically associated with vanishing parameter uncertainty as more data are observed. In the context of a misspecified deterministic mathematical model, this has the undesirable consequence that posterior predictions become deterministic and certain, while being incorrect. Taking this observation as a starting point, we propose Prediction-Centric Uncertainty Quantification, where a mixture distribution based on the deterministic model confers improved uncertainty quantification in the predictive context. Computation of the mixing distribution is cast as a (regularised) gradient flow of the maximum mean discrepancy (MMD), enabling consistent numerical approximations to be obtained. Results are reported on both a toy model from population ecology and a real model of protein signalling in cell biology.

Keywords

Cite

@article{arxiv.2410.11637,
  title  = {Prediction-Centric Uncertainty Quantification via MMD},
  author = {Zheyang Shen and Jeremias Knoblauch and Sam Power and Chris. J. Oates},
  journal= {arXiv preprint arXiv:2410.11637},
  year   = {2025}
}

Comments

Typos corrected. Accepted for AISTATS 2025

R2 v1 2026-06-28T19:22:39.894Z