Conditional flow matching for physics-constrained inverse problems with finite training data
Agnimitra Dasgupta, Ali Fardisi, Mehrnegar Aminy, Brianna Binder, Bryan Shaddy, Saeed Moazami, Assad Oberai

TL;DR
This paper introduces a conditional flow matching approach for physics-constrained inverse problems that efficiently models complex posteriors without explicit prior or likelihood evaluation.
Contribution
It develops a neural network-based velocity field learning method for inverse problems, analyzing finite data effects and proposing early stopping to prevent degeneracy.
Findings
The method accurately captures multimodal posterior distributions.
Overtraining can cause variance collapse and selective memorization.
Early stopping effectively mitigates degeneracy in learned distributions.
Abstract
This study presents a conditional flow matching framework for solving physics-constrained Bayesian inverse problems. In this setting, samples from the joint distribution of inferred variables and measurements are assumed available, while explicit evaluation of the prior and likelihood densities is not required. We derive a simple and self-contained formulation of both the unconditional and conditional flow matching algorithms, tailored specifically to inverse problems. In the conditional setting, a neural network is trained to learn the velocity field of a probability flow ordinary differential equation that transports samples from a chosen source distribution directly to the posterior distribution conditioned on observed measurements. This black-box formulation accommodates nonlinear, high-dimensional, and potentially non-differentiable forward models without restrictive assumptions on…
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