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Boosted Conformal Prediction Intervals

About

This paper introduces a boosted conformal procedure designed to tailor conformalized prediction intervals toward specific desired properties, such as enhanced conditional coverage or reduced interval length. We employ machine learning techniques, notably gradient boosting, to systematically improve upon a predefined conformity score function. This process is guided by carefully constructed loss functions that measure the deviation of prediction intervals from the targeted properties. The procedure operates post-training, relying solely on model predictions and without modifying the trained model (e.g., the deep network). Systematic experiments demonstrate that starting from conventional conformal methods, our boosted procedure achieves substantial improvements in reducing interval length and decreasing deviation from target conditional coverage.

Ran Xie, Rina Foygel Barber, Emmanuel J. Cand\`es• 2024

Related benchmarks

TaskDatasetResultRank
Conformal Predictionmeps 21 (test)
Average Length1.795
18
Conformal Predictionblog (test)--
14
Conformal Predictionfacebook 1 (test)
Average Length1.072
4
Conformal Predictionfacebook 2 (test)
Average Length1.075
4
Conformal Predictionmeps 19 (test)
Average Length1.685
4
Conformal Predictionmeps-20 (test)
Average Length1.836
4
Regressionbike (test)
Max Conditional Coverage Deviation (%)4.925
4
RegressionBio (test)
Max Conditional Coverage Deviation4.7
4
Regressioncommunity (test)
Max Conditional Coverage Deviation12.105
4
Regressionconcrete (test)
Max Conditional Coverage Deviation8.265
4
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