Deep Neural Networks via Monotone Operators

Deep Neural Networks via Monotone Operators

International Mathematical Union via YouTube Direct link

Intro

1 of 24

1 of 24

Intro

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Deep Neural Networks via Monotone Operators

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  1. 1 Intro
  2. 2 The deep learning revolution recent examp
  3. 3 Deep Learning The story we all tell: deep learning algorithms build hierarchical models of input date, where the earlier layers create simple features and layer layers create high- level abstractions…
  4. 4 This talk
  5. 5 Outline
  6. 6 From deep networks to DEQs
  7. 7 Long history of related work
  8. 8 Implementing DEQS
  9. 9 The DEQ forward pass
  10. 10 How to train your DEQ
  11. 11 How to train your DED Compute gradients analytically via implicit function theorem
  12. 12 More information on implicit layers
  13. 13 Language modeling: WikiText-103
  14. 14 Multiscale deep equilibrium models
  15. 15 ImageNet Top-1 Accuracy
  16. 16 Citiscapes mlou
  17. 17 Visualization of Segmentation
  18. 18 Theoretical/algorithmic challenges for DE
  19. 19 Key result
  20. 20 Proof sketch for simpler case
  21. 21 Monotone operator equilibrium network
  22. 22 Initial study: CIFAR10
  23. 23 Additional points on monotone DEOS
  24. 24 Final thoughts

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