Quantifying Uncertainty in the Presence of Distribution Shifts
- URL: http://arxiv.org/abs/2506.18283v1
- Date: Mon, 23 Jun 2025 04:30:36 GMT
- Title: Quantifying Uncertainty in the Presence of Distribution Shifts
- Authors: Yuli Slavutsky, David M. Blei,
- Abstract summary: Neural networks make accurate predictions but often fail to provide reliable uncertainty estimates.<n>We propose a Bayesian framework for uncertainty estimation.<n>We evaluate our method on both synthetic and real-world data.
- Score: 18.273290530700567
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Neural networks make accurate predictions but often fail to provide reliable uncertainty estimates, especially under covariate distribution shifts between training and testing. To address this problem, we propose a Bayesian framework for uncertainty estimation that explicitly accounts for covariate shifts. While conventional approaches rely on fixed priors, the key idea of our method is an adaptive prior, conditioned on both training and new covariates. This prior naturally increases uncertainty for inputs that lie far from the training distribution in regions where predictive performance is likely to degrade. To efficiently approximate the resulting posterior predictive distribution, we employ amortized variational inference. Finally, we construct synthetic environments by drawing small bootstrap samples from the training data, simulating a range of plausible covariate shift using only the original dataset. We evaluate our method on both synthetic and real-world data. It yields substantially improved uncertainty estimates under distribution shifts.
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