Implicit Weight Uncertainty in Neural Networks
Pawlowski, Nick, Rajchl, Martin, Glocker, Ben
We interpret HyperNetworks within the framework of variational inference within implicit distributions. Our method, Bayes by Hypernet, is able to model a richer variational distribution than previous methods. Experiments show that it achieves comparable predictive performance on the MNIST classification task while providing higher predictive uncertainties compared to MC-Dropout and regular maximum likelihood training.
Nov-3-2017