Certified Learning under Distribution Shift: Sound Verification and Identifiable Structure
Machine Learning
2026-02-23 v1 Rings and Algebras
Machine Learning
Abstract
Proposition. Let be a predictor trained on a distribution and evaluated on a shifted distribution . Under verifiable regularity and complexity constraints, the excess risk under shift admits an explicit upper bound determined by a computable shift metric and model parameters. We develop a unified framework in which (i) risk under distribution shift is certified by explicit inequalities, (ii) verification of learned models is sound for nontrivial sizes, and (iii) interpretability is enforced through identifiability conditions rather than post hoc explanations. All claims are stated with explicit assumptions. Failure modes are isolated. Non-certifiable regimes are characterized.
Cite
@article{arxiv.2602.17699,
title = {Certified Learning under Distribution Shift: Sound Verification and Identifiable Structure},
author = {Chandrasekhar Gokavarapu and Sudhakar Gadde and Y. Rajasekhar and S. R. Bhargava},
journal= {arXiv preprint arXiv:2602.17699},
year = {2026}
}