2022
DOI: 10.48550/arxiv.2206.02768
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The Neural Covariance SDE: Shaped Infinite Depth-and-Width Networks at Initialization

Abstract: The logit outputs of a feedforward neural network at initialization are conditionally Gaussian, given a random covariance matrix defined by the penultimate layer. In this work, we study the distribution of this random matrix. Recent work has shown that shaping the activation function as network depth grows large is necessary for this covariance matrix to be non-degenerate. However, the current infinite-width-style understanding of this shaping method is unsatisfactory for large depth: infinite-width analyses i… Show more

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