FSP-L APLACE: Function-Space Priors for the Laplace Approximation in Bayesian Deep Learning Tristan Cinquin
–Neural Information Processing Systems
Laplace approximations are popular techniques for endowing deep networks with epistemic uncertainty estimates as they can be applied without altering the predictions of the trained network, and they scale to large models and datasets.
Neural Information Processing Systems
Nov-14-2025, 04:49:11 GMT
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