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  • title: Precise characterization of the prior predictive distribution of deep ReLU networks
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            Precise characterization of the prior predictive distribution of deep ReLU networks
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            Precise characterization of the prior predictive distribution of deep ReLU networks

            Dec 6, 2021

            Speakers

            LN

            Lorenzo Noci

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            GB

            Gregor Bachmann

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            KR

            Kevin Roth

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            About

            Recent works on Bayesian neural networks (BNNs) have highlighted the need to better understand the implications of using Gaussian priors in combination with the compositional structure of the network architecture. Similar in spirit to the kind of analysis that has been developed to devise better initialization schemes for neural networks (cf. He- or Xavier initialization), we derive a precise characterization of the prior predictive distribution of finite-width ReLU networks with Gaussian weight…

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            NeurIPS 2021

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