SOTAVerified

Conformalized Survival Distributions: A Generic Post-Process to Increase Calibration

2024-05-12Code Available0· sign in to hype

Shi-ang Qi, Yakun Yu, Russell Greiner

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Discrimination and calibration represent two important properties of survival analysis, with the former assessing the model's ability to accurately rank subjects and the latter evaluating the alignment of predicted outcomes with actual events. With their distinct nature, it is hard for survival models to simultaneously optimize both of them especially as many previous results found improving calibration tends to diminish discrimination performance. This paper introduces a novel approach utilizing conformal regression that can improve a model's calibration without degrading discrimination. We provide theoretical guarantees for the above claim, and rigorously validate the efficiency of our approach across 11 real-world datasets, showcasing its practical applicability and robustness in diverse scenarios.

Tasks

Reproductions