Conformal Bayesian Computation
Abstract
We develop scalable methods for producing conformal Bayesian predictive intervals with finite sample calibration guarantees. Bayesian posterior predictive distributions, , characterize subjective beliefs on outcomes of interest, , conditional on predictors, . Bayesian prediction is well-calibrated when the model is true, but the predictive intervals may exhibit poor empirical coverage when the model is misspecified, under the so called -open perspective. In contrast, conformal inference provides finite sample frequentist guarantees on predictive confidence intervals without the requirement of model fidelity. Using 'add-one-in' importance sampling, we show that conformal Bayesian predictive intervals are efficiently obtained from re-weighted posterior samples of model parameters. Our approach contrasts with existing conformal methods that require expensive refitting of models or data-splitting to achieve computational efficiency. We demonstrate the utility on a range of examples including extensions to partially exchangeable settings such as hierarchical models.
Cite
@article{arxiv.2106.06137,
title = {Conformal Bayesian Computation},
author = {Edwin Fong and Chris Holmes},
journal= {arXiv preprint arXiv:2106.06137},
year = {2021}
}
Comments
19 pages, 4 figures, 12 tables; added references and fixed typos