Backward Conformal Prediction
Journal:
arXiv
Published Date:
May 19, 2025
Abstract
We introduce $\textit{Backward Conformal Prediction}$, 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 $\mathbb{P}(Y_{\rm
test} \in \hat C_n^{\tilde{\alpha}}(X_{\rm test})) \ge 1 -
\mathbb{E}[\tilde{\alpha}]$ up to a first-order Taylor approximation for any
data-dependent miscoverage $\tilde{\alpha}$, and (ii) a novel leave-one-out
estimator $\hat{\alpha}^{\rm LOO}$ of the marginal miscoverage
$\mathbb{E}[\tilde{\alpha}]$ based on the calibration set, ensuring that the
theoretical guarantees remain computable in practice. This approach is
particularly useful in applications where large prediction sets are impractical
such as medical diagnosis. We provide theoretical results and empirical
evidence supporting the validity of our method, demonstrating that it maintains
computable coverage guarantees while ensuring interpretable, well-controlled
prediction set sizes.