xInv: Explainable Optimization of Inverse Problems
Abstract
Inverse problems are central to a wide range of fields, including healthcare, climate science, and agriculture. They involve the estimation of inputs, typically via iterative optimization, to some known forward model so that it produces a desired outcome. Despite considerable development in the explainability and interpretability of forward models, the iterative optimization of inverse problems remains largely cryptic to domain experts. We propose a methodology to produce explanations, from traces produced by an optimizer, that are interpretable by humans at the abstraction of the domain. The central idea in our approach is to instrument a differentiable simulator so that it emits natural language events during its forward and backward passes. In a post-process, we use a Language Model to create an explanation from the list of events. We demonstrate the effectiveness of our approach with an illustrative optimization problem and an example involving the training of a neural network.
Cite
@article{arxiv.2506.11056,
title = {xInv: Explainable Optimization of Inverse Problems},
author = {Sean Memery and Kevin Denamganai and Anna Kapron-King and Kartic Subr},
journal= {arXiv preprint arXiv:2506.11056},
year = {2025}
}