Conditional Conformal Risk Adaptation
Journal:
arXiv
Published Date:
Apr 10, 2025
Abstract
Uncertainty quantification is becoming increasingly important in image
segmentation, especially for high-stakes applications like medical imaging.
While conformal risk control generalizes conformal prediction beyond standard
miscoverage to handle various loss functions such as false negative rate, its
application to segmentation often yields inadequate conditional risk control:
some images experience very high false negative rates while others have
negligibly small ones. We develop Conformal Risk Adaptation (CRA), which
introduces a new score function for creating adaptive prediction sets that
significantly improve conditional risk control for segmentation tasks. We
establish a novel theoretical framework that demonstrates a fundamental
connection between conformal risk control and conformal prediction through a
weighted quantile approach, applicable to any score function. To address the
challenge of poorly calibrated probabilities in segmentation models, we
introduce a specialized probability calibration framework that enhances the
reliability of pixel-wise inclusion estimates. Using these calibrated
probabilities, we propose Calibrated Conformal Risk Adaptation (CCRA) and a
stratified variant (CCRA-S) that partitions images based on their
characteristics and applies group-specific thresholds to further enhance
conditional risk control. Our experiments on polyp segmentation demonstrate
that all three methods (CRA, CCRA, and CCRA-S) provide valid marginal risk
control and deliver more consistent conditional risk control across diverse
images compared to standard approaches, offering a principled approach to
uncertainty quantification that is particularly valuable for high-stakes and
personalized segmentation applications.