SOTAVerified

Conformal Prediction with Upper and Lower Bound Models

2025-03-06Unverified0· sign in to hype

Miao Li, Michael Klamkin, Mathieu Tanneau, Reza Zandehshahvar, Pascal Van Hentenryck

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

This paper studies a Conformal Prediction (CP) methodology for building prediction intervals in a regression setting, given only deterministic lower and upper bounds on the target variable. It proposes a new CP mechanism (CPUL) that goes beyond post-processing by adopting a model selection approach over multiple nested interval construction methods. Paradoxically, many well-established CP methods, including CPUL, may fail to provide adequate coverage in regions where the bounds are tight. To remedy this limitation, the paper proposes an optimal thresholding mechanism, OMLT, that adjusts CPUL intervals in tight regions with undercoverage. The combined CPUL-OMLT is validated on large-scale learning tasks where the goal is to bound the optimal value of a parametric optimization problem. The experimental results demonstrate substantial improvements over baseline methods across various datasets.

Tasks

Reproductions