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Conditional Coverage Diagnostics for Conformal Prediction

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arxiv 2512.11779 v2 pith:2DPLHHVO submitted 2025-12-12 stat.ML cs.AIcs.LG

Conditional Coverage Diagnostics for Conformal Prediction

classification stat.ML cs.AIcs.LG
keywords coverageconditionalmetricsconformalrisktargetclassifiersmethods
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Evaluating conditional coverage remains one of the most persistent challenges in assessing the reliability of predictive systems. Although conformal methods can give guarantees on marginal coverage, no method can guarantee to produce sets with correct conditional coverage, leaving practitioners without a clear way to interpret local deviations. To overcome sample-inefficiency and overfitting issues of existing metrics, we cast conditional coverage estimation as a classification problem. Conditional coverage is violated if and only if some classifier can achieve lower risk than the target coverage. Through the choice of a (proper) loss function, the resulting risk difference gives a conservative estimate of natural miscoverage measures such as L1 and L2 distance, and can even separate the effects of over- and under-coverage, and non-constant target coverages. We call the resulting family of metrics excess risk of the target coverage (ERT). We show experimentally that the use of modern classifiers provides much higher statistical power than simple classifiers underlying established metrics like CovGap. Additionally, we use our metric to benchmark different conformal prediction methods. Finally, we release an open-source package for ERT as well as previous conditional coverage metrics. Together, these contributions provide a new lens for understanding, diagnosing, and improving the conditional reliability of predictive systems.

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Cited by 3 Pith papers

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    SOCP uses self-organizing maps for unsupervised group discovery to enable local calibration in conformal prediction, reducing regional coverage gaps on benchmarks with small set-size increases while preserving validit...

  2. A Post-Processing Conformal Prediction Approach for Conditional Coverage via Pivotal Scores

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    PIT-CP post-processes nonconformity scores via one-dimensional conditional density estimation to produce approximately pivotal scores, achieving approximate conditional coverage in conformal prediction for i.i.d. data.

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