
TL;DR
This paper introduces Weighted Bayesian Conformal Prediction (WBCP), extending conformal prediction to handle importance-weighted data, providing distribution-free, data-conditional guarantees with richer uncertainty quantification.
Contribution
WBCP generalizes Bayesian Quadrature conformal prediction to importance-weighted settings using weighted Dirichlet priors, with theoretical guarantees and practical spatial prediction applications.
Findings
WBCP maintains coverage guarantees under importance weighting.
WBCP provides richer, interpretable uncertainty information in spatial predictions.
Theoretical results link effective sample size to variance and coverage improvements.
Abstract
Conformal prediction provides distribution-free prediction intervals with finite-sample coverage guarantees, and recent work by Snell \& Griffiths reframes it as Bayesian Quadrature (BQ-CP), yielding powerful data-conditional guarantees via Dirichlet posteriors over thresholds. However, BQ-CP fundamentally requires the i.i.d. assumption -- a limitation the authors themselves identify. Meanwhile, weighted conformal prediction handles distribution shift via importance weights but remains frequentist, producing only point-estimate thresholds. We propose \textbf{Weighted Bayesian Conformal Prediction (WBCP)}, which generalizes BQ-CP to arbitrary importance-weighted settings by replacing the uniform Dirichlet with a weighted Dirichlet , where is Kish's effective sample size. We prove four theoretical…
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