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arxiv: 1805.07654 · v2 · pith:EXTHR5Z2new · submitted 2018-05-19 · 📊 stat.ML · cs.LG

Sampling-Free Variational Inference of Bayesian Neural Networks by Variance Backpropagation

classification 📊 stat.ML cs.LG
keywords inferenceneuralvariationalapproximationbayesianboundevidenceintroducing
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We propose a new Bayesian Neural Net formulation that affords variational inference for which the evidence lower bound is analytically tractable subject to a tight approximation. We achieve this tractability by (i) decomposing ReLU nonlinearities into the product of an identity and a Heaviside step function, (ii) introducing a separate path that decomposes the neural net expectation from its variance. We demonstrate formally that introducing separate latent binary variables to the activations allows representing the neural network likelihood as a chain of linear operations. Performing variational inference on this construction enables a sampling-free computation of the evidence lower bound which is a more effective approximation than the widely applied Monte Carlo sampling and CLT related techniques. We evaluate the model on a range of regression and classification tasks against BNN inference alternatives, showing competitive or improved performance over the current state-of-the-art.

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