Imaging and machine learning

Collection Imaging and machine learning

Organizer(s)
Date(s) 03/05/2024
00:00:00 / 00:00:00
2 30

We propose a new point of view for regularizing deep neural networks by using the norm of a reproducing kernel Hilbert space (RKHS). Even though this norm cannot be computed, it admits upper and lower approximations leading to various practical strategies. Specifically, this perspective (i) provides a common umbrella for many existing regularization principles, including spectral norm and gradient penalties, or adversarial training, (ii) leads to new effective regularization penalties, and (iii) suggests hybrid strategies combining lower and upper bounds to get better approximations of the RKHS norm. We experimentally show this approach to be effective when learning on small datasets, or to obtain adversarially robust models. This is a joint work with Alberto Bietti, Gregoire Mialon and Dexiong Chen.

Information about the video

  • Date of recording 01/04/2019
  • Date of publication 07/05/2019
  • Institution IHP
  • Language English
  • Format MP4
  • Venue Institut Henri Poincaré

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