MLAILGMEOTJul 28, 2025

Multivariate Conformal Prediction via Conformalized Gaussian Scoring

arXiv:2507.20941v14 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses the computational bottleneck in conformal prediction for practitioners needing efficient and accurate uncertainty quantification, though it is incremental as it builds on existing density estimation approaches.

The paper tackles the problem of achieving conditional coverage in conformal prediction by proposing a Gaussian-based score that avoids costly sampling, resulting in conformal sets that better approximate conditional coverage in multivariate settings compared to alternative methods.

While achieving exact conditional coverage in conformal prediction is unattainable without making strong, untestable regularity assumptions, the promise of conformal prediction hinges on finding approximations to conditional guarantees that are realizable in practice. A promising direction for obtaining conditional dependence for conformal sets--in particular capturing heteroskedasticity--is through estimating the conditional density $\mathbb{P}_{Y|X}$ and conformalizing its level sets. Previous work in this vein has focused on nonconformity scores based on the empirical cumulative distribution function (CDF). Such scores are, however, computationally costly, typically requiring expensive sampling methods. To avoid the need for sampling, we observe that the CDF-based score reduces to a Mahalanobis distance in the case of Gaussian scores, yielding a closed-form expression that can be directly conformalized. Moreover, the use of a Gaussian-based score opens the door to a number of extensions of the basic conformal method; in particular, we show how to construct conformal sets with missing output values, refine conformal sets as partial information about $Y$ becomes available, and construct conformal sets on transformations of the output space. Finally, empirical results indicate that our approach produces conformal sets that more closely approximate conditional coverage in multivariate settings compared to alternative methods.

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