Data-Adaptive Tradeoffs among Multiple Risks in Distribution-Free Prediction
Methodology
2024-03-29 v1 Machine Learning
Abstract
Decision-making pipelines are generally characterized by tradeoffs among various risk functions. It is often desirable to manage such tradeoffs in a data-adaptive manner. As we demonstrate, if this is done naively, state-of-the art uncertainty quantification methods can lead to significant violations of putative risk guarantees. To address this issue, we develop methods that permit valid control of risk when threshold and tradeoff parameters are chosen adaptively. Our methodology supports monotone and nearly-monotone risks, but otherwise makes no distributional assumptions. To illustrate the benefits of our approach, we carry out numerical experiments on synthetic data and the large-scale vision dataset MS-COCO.
Cite
@article{arxiv.2403.19605,
title = {Data-Adaptive Tradeoffs among Multiple Risks in Distribution-Free Prediction},
author = {Drew T. Nguyen and Reese Pathak and Anastasios N. Angelopoulos and Stephen Bates and Michael I. Jordan},
journal= {arXiv preprint arXiv:2403.19605},
year = {2024}
}
Comments
27 pages, 10 figures