Correspondence between neuroevolution and gradient descent

Author(s): Stephen Whitelam, Viktor Selin, Sang-Won Park, Isaac Tamblyn
Venue: Nature Communications
Year: 2021

Paper: https://www.nature.com/articles/s41467-021-26568-2

Abstract

We show analytically that training a neural network by conditioned stochastic mutation or neuroevolution of its weights is equivalent, in the limit of small mutations, to gradient descent on the loss function in the presence of Gaussian white noise. Averaged over independent realizations of the learning process, neuroevolution is equivalent to gradient descent on the loss function. We use numerical simulation to show that this correspondence can be observed for finite mutations, for shallow and deep neural networks. Our results provide a connection between two families of neural-network training methods that are usually considered to be fundamentally different.

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