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Abstract
Modern neural networks tend to be overconfident on unseen, noisy or
incorrectly labelled data and do not produce meaningful uncertainty measures.
Bayesian deep learning aims to address this shortcoming with variational
approximations (such as Bayes by Backprop or Multiplicative Normalising Flows).
However, current approaches have limitations regarding flexibility and
scalability. We introduce Bayes by Hypernet (BbH), a new method of variational
approximation that interprets hypernetworks as implicit distributions. It
naturally uses neural networks to model arbitrarily complex distributions and
scales to modern deep learning architectures. In our experiments, we
demonstrate that our method achieves competitive accuracies and predictive
uncertainties on MNIST and a CIFAR5 task, while being the most robust against
adversarial attacks.