Source
Russian Journal of Numerical Analysis and Mathematical Modelling
DATE OF PUBLICATION
02/17/2023
Authors
Ivan Oseledets Daria Fokina
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Growing axons: greedy learning of neural networks with application to function approximation

Abstract

We propose a new method for learning deep neural network models, which is based on a greedy learning approach: we add one basis function at a time, and a new basis function is generated as a non-linear activation function applied to a linear combination of the previous basis functions. Such a method (growing deep neural network by one neuron at a time) allows us to compute much more accurate approximants for several model problems in function approximation.

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