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Do Bayesian Neural Networks Need To Be Fully Stochastic?

11 November 2022
Mrinank Sharma
Sebastian Farquhar
Eric T. Nalisnick
Tom Rainforth
    BDL
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Abstract

We investigate the benefit of treating all the parameters in a Bayesian neural network stochastically and find compelling theoretical and empirical evidence that this standard construction may be unnecessary. To this end, we prove that expressive predictive distributions require only small amounts of stochasticity. In particular, partially stochastic networks with only nnn stochastic biases are universal probabilistic predictors for nnn-dimensional predictive problems. In empirical investigations, we find no systematic benefit of full stochasticity across four different inference modalities and eight datasets; partially stochastic networks can match and sometimes even outperform fully stochastic networks, despite their reduced memory costs.

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