Deep neural networks with dependent weights: Gaussian process mixture limit, heavy tails, sparsity and compressibility

This article studies the infinite-width limit of deep feedforward neural networks whose weights are dependent, and modelled via a mixture of Gaussian distributions. Each hidden node of the network is assigned a nonnegative random variable that controls the variance of the outgoing weights of that no...

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Bibliographic Details
Main Authors: Lee, H, Ayed, F, Jung, P, Lee, J, Yang, H, Caron, FLR
Format: Journal article
Language:English
Published: Journal of Machine Learning Research 2023