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Structure-preserving deep learning
2021
European journal of applied mathematics
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
doi:10.1017/s0956792521000139
fatcat:zhynqzjuorbcbmz62nm6t44fzi