[PDF] Exponential expressivity in deep neural networks through transient chaos - Semantic Scholar
We combine Riemannian geometry with the mean field theory of high dimensional chaos to study the nature of signal propagation in deep neural networks with random weights. Our results reveal a phase transition in the expressivity of random deep networks, with networks in the chaotic phase computing nonlinear functions whose global curvature grows exponentially with depth, but not with width.
Sep-19-2019, 21:06:50 GMT
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