Beyond Uncertainty Sets: Leveraging Optimal Transport to Extend Conformal Predictive Distribution to Multivariate Settings
Eugene Ndiaye

TL;DR
This paper introduces a novel method combining optimal transport with conformal prediction to create valid multivariate predictive distributions with finite-sample coverage guarantees, extending the scope of conformal methods beyond univariate scores.
Contribution
It develops the first multivariate conformal predictive distributions with finite-sample calibration using optimal transport, addressing a key limitation of existing conformal methods.
Findings
Restores finite-sample, distribution-free coverage for multivariate scores.
Provides a tractable characterization of the entire prediction set.
Introduces conservative and exact randomized multivariate conformal predictive distributions.
Abstract
Conformal prediction (CP) constructs uncertainty sets for model outputs with finite-sample coverage guarantees. A candidate output is included in the prediction set if its non-conformity score is not considered extreme relative to the scores observed on a set of calibration examples. However, this procedure is only straightforward when scores are scalar-valued, which has limited CP to real-valued scores or ad-hoc reductions to one dimension. The problem of ordering vectors has been studied via optimal transport (OT), which provides a principled method for defining vector-ranks and multivariate quantile regions, though typically with only asymptotic coverage guarantees. We restore finite-sample, distribution-free coverage by conformalizing the vector-valued OT quantile region. Here, a candidate's rank is defined via a transport map computed for the calibration scores augmented with that…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Explainable Artificial Intelligence (XAI) · Adversarial Robustness in Machine Learning
