Published August 19, 2022
| Version v1
Journal article
Open
Universal prediction band via semi-definite programming
Description
We propose a computationally efficient method to construct nonparametric, heteroscedastic prediction bands for uncertainty quantification, with or without any user-specified predictive model. Our approach provides an alternative to the now-standard conformal prediction for uncertainty quantification, with novel theoretical insights and computational advantages. The data-adaptive prediction band is universally applicable with minimal distributional assumptions, has strong non-asymptotic coverage properties, and is easy to implement using standard convex programs. Our approach can be viewed as a novel variance interpolation with confidence and further leverages techniques from semi-definite programming and sum-of-squares optimization. Theoretical and numerical performances for the proposed approach for uncertainty quantification are analysed.
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Additional details
Identifiers
- DOI
- 10.1111/rssb.12542
- Other
- oai:uchicago.tind.io:5202
Funding
- NSF
- Career award
- Unknown funder
- George C. Tiao Fellowship
- University of Chicago
- William S. Fishman faculty fellowship