Authors
Elena Celledoni, Matthias J Ehrhardt, Christian Etmann, Robert I McLachlan, Brynjulf Owren, C-B SCHONLIEB, Ferdia Sherry
Publication date
2021/10
Journal
European Journal of Applied Mathematics
Volume
32
Issue
5
Pages
888-936
Publisher
Cambridge University Press
Description
Over the past few years, deep learning has risen to the foreground as a topic of massive interest, mainly as a result of successes obtained in solving large-scale image processing tasks. There are multiple challenging mathematical problems involved in applying deep learning: most deep learning methods require the solution of hard optimisation problems, and a good understanding of the trade-off between computational effort, amount of data and model complexity is required to successfully design a deep learning approach for a given problem.. A large amount of progress made in deep learning has been based on heuristic explorations, but there is a growing effort to mathematically understand the structure in existing deep learning methods and to systematically design new deep learning methods to preserve certain types of structure in deep learning. In this article, we review a number of these directions: some …
Total citations
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Scholar articles
E Celledoni, MJ Ehrhardt, C Etmann, RI McLachlan… - European journal of applied mathematics, 2021