Latent Variable EBMs for Structured Prediction

Latent Variable EBMs for Structured Prediction

Alfredo Canziani via YouTube Direct link

– Generative adversarial networks GANs

10 of 24

10 of 24

– Generative adversarial networks GANs

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Latent Variable EBMs for Structured Prediction

Automatically move to the next video in the Classroom when playback concludes

  1. 1 – Welcome to class
  2. 2 – Training of an EBM
  3. 3 – Contrastive vs. regularised / architectural methods
  4. 4 – General margin loss
  5. 5 – List of loss functions
  6. 6 – Generalised additive margin loss
  7. 7 – Joint embedding architectures
  8. 8 – Wav2Vec 2.0
  9. 9 – XLSR: multilingual speech recognition
  10. 10 – Generative adversarial networks GANs
  11. 11 – Mode collapse
  12. 12 – Non-contrastive methods
  13. 13 – BYOL: bootstrap your own latent
  14. 14 – SwAV
  15. 15 – Barlow twins
  16. 16 – SEER
  17. 17 – Latent variable models in practice
  18. 18 – DETR
  19. 19 – Structured prediction
  20. 20 – Factor graph
  21. 21 – Viterbi algorithm whiteboard time
  22. 22 – Graph transformer networks
  23. 23 – Graph composition, transducers
  24. 24 – Final remarks

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.