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Neural ODEs as the Deep Limit of ResNets with constant weights

Published 28 Jun 2019 in stat.ML, cs.LG, math.AP, and math.CA | (1906.12183v2)

Abstract: In this paper we prove that, in the deep limit, the stochastic gradient descent on a ResNet type deep neural network, where each layer shares the same weight matrix, converges to the stochastic gradient descent for a Neural ODE and that the corresponding value/loss functions converge. Our result gives, in the context of minimization by stochastic gradient descent, a theoretical foundation for considering Neural ODEs as the deep limit of ResNets. Our proof is based on certain decay estimates for associated Fokker-Planck equations.

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