Poster
in
Affinity Workshop: New In ML
SCD-split: Smoothing-Based Conformal Prediction for Balancing Interval Length and Interpretability
Mingyi Zheng · Hongyu Jiang · Yizhou Lu · Jiaye Teng
Conformal Prediction (CP) is a distribution-free framework for constructing statistically rigorous prediction sets. While popular variants such as CD-split improve CP’s efficiency, they often yield prediction sets composed of multiple disconnected subintervals, which are difficult to present and interpret. In this paper, we propose SCD-split, which incorporates smoothing operations into the CP framework. Such smoothing operations might help merge the subintervals, thus leading to interpretable prediction sets. Experimental results on both synthetic and real-world datasets demonstrate that SCD-split balances the interval length and the number of disconnected subintervals. Theoretically, under specific conditions, SCD-split provably reduces the number of disconnected subintervals while maintaining comparable coverage guarantees and interval length compared with CD-split.