Ensembling geophysical models with Bayesian Neural Networks
–Neural Information Processing Systems
Ensembles of geophysical models improve prediction accuracy and express uncertainties. We develop a novel data-driven ensembling strategy for combining geophysical models using Bayesian Neural Networks, which infers spatiotem-porally varying model weights and bias, while accounting for heteroscedastic uncertainties in the observations. This produces more accurate and uncertainty-aware predictions without sacrificing interpretability.
Neural Information Processing Systems
Oct-2-2025, 01:01:12 GMT