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Exact posterior distributions of wide Bayesian neural networks

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arxiv 2006.10541 v2 pith:UDAH4DGE submitted 2020-06-18 stat.ML cs.LG

Exact posterior distributions of wide Bayesian neural networks

classification stat.ML cs.LG
keywords posteriorexactbayesianempiricalinducedneuralpriorsmall
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent work has shown that the prior over functions induced by a deep Bayesian neural network (BNN) behaves as a Gaussian process (GP) as the width of all layers becomes large. However, many BNN applications are concerned with the BNN function space posterior. While some empirical evidence of the posterior convergence was provided in the original works of Neal (1996) and Matthews et al. (2018), it is limited to small datasets or architectures due to the notorious difficulty of obtaining and verifying exactness of BNN posterior approximations. We provide the missing theoretical proof that the exact BNN posterior converges (weakly) to the one induced by the GP limit of the prior. For empirical validation, we show how to generate exact samples from a finite BNN on a small dataset via rejection sampling.

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