Co-optimization for Adaptive Conformal Prediction
Xiaoyi Su, Zhixin Zhou, Rui Luo

TL;DR
This paper introduces CoCP, a novel framework that jointly optimizes the center and radius of prediction intervals, resulting in shorter, more accurate conformal prediction intervals under heteroscedasticity.
Contribution
CoCP is a new method that adaptively learns prediction intervals by alternating between quantile regression and center refinement, improving efficiency over existing conformal methods.
Findings
CoCP produces consistently shorter prediction intervals.
It achieves state-of-the-art conditional coverage diagnostics.
Theoretical analysis shows convergence to length-minimizing intervals.
Abstract
Conformal prediction (CP) provides finite-sample, distribution-free marginal coverage, but standard conformal regression intervals can be inefficient under heteroscedasticity and skewness. In particular, popular constructions such as conformalized quantile regression (CQR) often inherit a fixed notion of center and enforce equal-tailed errors, which can displace the interval away from high-density regions and produce unnecessarily wide sets. We propose Co-optimization for Adaptive Conformal Prediction (CoCP), a framework that learns prediction intervals by jointly optimizing a center and a radius .CoCP alternates between (i) learning via quantile regression on the folded absolute residual around the current center, and (ii) refining with a differentiable soft-coverage objective whose gradients concentrate near the current boundaries, effectively correcting…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Statistical Methods and Inference · Face and Expression Recognition
