Backward Conformal Prediction
Etienne Gauthier, Francis Bach, Michael I. Jordan

TL;DR
Backward Conformal Prediction offers a flexible approach to control prediction set sizes while maintaining coverage guarantees, adapting coverage levels based on observed data and leveraging e-values for validity.
Contribution
It introduces a novel backward conformal prediction method that combines e-value-based validity with a leave-one-out estimator for practical, data-dependent coverage control.
Findings
Maintains valid coverage guarantees in various settings.
Provides interpretable and well-controlled prediction set sizes.
Demonstrates effectiveness through theoretical and empirical results.
Abstract
We introduce , a method that guarantees conformal coverage while providing flexible control over the size of prediction sets. Unlike standard conformal prediction, which fixes the coverage level and allows the conformal set size to vary, our approach defines a rule that constrains how prediction set sizes behave based on the observed data, and adapts the coverage level accordingly. Our method builds on two key foundations: (i) recent results by Gauthier et al. [2025] on post-hoc validity using e-values, which ensure marginal coverage of the form up to a first-order Taylor approximation for any data-dependent miscoverage , and (ii) a novel leave-one-out estimator of the marginal miscoverage…
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Taxonomy
TopicsNeural Networks and Applications
MethodsSparse Evolutionary Training
