Position: There Is No Free Bayesian Uncertainty Quantification
Position: There Is No Free Bayesian Uncertainty Quantification
Due to their intuitive appeal, Bayesian methods of modeling and uncertainty quantification have become popular in modern machine and deep learning. When providing a prior distribution over the parameter space, it is straightforward to obtain a distribution over the parameters that is conventionally interpreted as uncertainty quantification of the model. We challenge the validity of such Bayesian uncertainty quantification by discussing the equivalent optimization-based representation of Bayesian updating, provide an alternative interpretation that is coherent with the optimization-based perspective, propose measures of the quality of the Bayesian inferential stage, and suggest directions for future work.
Ivan Melev、Goeran Kauermann
计算技术、计算机技术
Ivan Melev,Goeran Kauermann.Position: There Is No Free Bayesian Uncertainty Quantification[EB/OL].(2025-06-04)[2025-07-16].https://arxiv.org/abs/2506.03670.点此复制
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