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Improving the statistical efficiency of cross-conformal prediction

Main:12 Pages
6 Figures
Bibliography:4 Pages
9 Tables
Appendix:9 Pages
Abstract

Vovk (2015) introduced cross-conformal prediction, a modification of split conformal designed to improve the width of prediction sets. The method, when trained with a miscoverage rate equal to α\alpha and nKn \gg K, ensures a marginal coverage of at least 12α2(1α)(K1)/(n+K)1 - 2\alpha - 2(1-\alpha)(K-1)/(n+K), where nn is the number of observations and KK denotes the number of folds. A simple modification of the method achieves coverage of at least 12α1-2\alpha. In this work, we propose new variants of both methods that yield smaller prediction sets without compromising the latter theoretical guarantees. The proposed methods are based on recent results deriving more statistically efficient combination of p-values that leverage exchangeability and randomization. Simulations confirm the theoretical findings and bring out some important tradeoffs.

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