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Position: The Future of Bayesian Prediction Is Prior-Fitted

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Link to Profile David Rügamer PI Matchmaking

David Rügamer

Prof. Dr.

Principal Investigator

Abstract

Training neural networks on randomly generated artificial datasets yields Bayesian models that capture the prior defined by the dataset-generating distribution. Prior-data Fitted Networks (PFNs) are a class of methods designed to leverage this insight. In an era of rapidly increasing computational resources for pre-training and a near stagnation in the generation of new real-world data in many applications, PFNs are poised to play a more important role across a wide range of applications. They enable the efficient allocation of pre-training compute to low-data scenarios. Originally applied to small Bayesian modeling tasks, the field of PFNs has significantly expanded to address more complex domains and larger datasets. This position paper argues that PFNs and other amortized inference approaches represent the future of Bayesian inference, leveraging amortized learning to tackle data-scarce problems. We thus believe they are a fruitful area of research. In this position paper, we explore their potential and directions to address their current limitations.

inproceedings


ICML 2025

42nd International Conference on Machine Learning. Vancouver, Canada, Jul 13-19, 2025.
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A* Conference

Authors

S. Müller • A. Reuter • N. Hollmann • D. Rügamer • F. Hutter

Links

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Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: MRH+25

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