English

End-to-End Conformal Calibration for Optimization Under Uncertainty

Machine Learning 2026-02-03 v2 Optimization and Control

Abstract

Machine learning can significantly improve performance for decision-making under uncertainty across a wide range of domains. However, ensuring robustness guarantees requires well-calibrated uncertainty estimates, which can be difficult to achieve with neural networks. Moreover, in high-dimensional settings, there may be many valid uncertainty estimates, each with its own performance profile - i.e., not all uncertainty is equally valuable for downstream decision-making. To address this problem, this paper develops an end-to-end framework to learn uncertainty sets for conditional robust optimization in a way that is informed by the downstream decision-making loss, with robustness and calibration guarantees provided by conformal prediction. In addition, we propose to represent general convex uncertainty sets with partially input-convex neural networks, which are learned as part of our framework. Our approach consistently improves upon two-stage estimate-then-optimize baselines on concrete applications in energy storage arbitrage and portfolio optimization.

Keywords

Cite

@article{arxiv.2409.20534,
  title  = {End-to-End Conformal Calibration for Optimization Under Uncertainty},
  author = {Christopher Yeh and Nicolas Christianson and Alan Wu and Adam Wierman and Yisong Yue},
  journal= {arXiv preprint arXiv:2409.20534},
  year   = {2026}
}

Comments

29 pages, 8 figures

R2 v1 2026-06-28T19:02:42.153Z