Parameter Sharing - Recurrent and Convolutional Nets

Parameter Sharing - Recurrent and Convolutional Nets

Alfredo Canziani via YouTube Direct link

– Parameter sharing ⇒ adding the gradients

4 of 29

4 of 29

– Parameter sharing ⇒ adding the gradients

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Classroom Contents

Parameter Sharing - Recurrent and Convolutional Nets

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  1. 1 – Welcome to class
  2. 2 – Hypernetworks
  3. 3 – Shared weights
  4. 4 – Parameter sharing ⇒ adding the gradients
  5. 5 – Max and sum reductions
  6. 6 – Recurrent nets
  7. 7 – Unrolling in time
  8. 8 – Vanishing and exploding gradients
  9. 9 – Math on the whiteboard
  10. 10 – RNN tricks
  11. 11 – RNN for differential equations
  12. 12 – GRU
  13. 13 – What is a memory
  14. 14 – LSTM – Long Short-Term Memory net
  15. 15 – Multilayer LSTM
  16. 16 – Attention for sequence to sequence mapping
  17. 17 – Convolutional nets
  18. 18 – Detecting motifs in images
  19. 19 – Convolution definitions
  20. 20 – Backprop through convolutions
  21. 21 – Stride and skip: subsampling and convolution “à trous”
  22. 22 – Convolutional net architecture
  23. 23 – Multiple convolutions
  24. 24 – Vintage ConvNets
  25. 25 – How does the brain interpret images?
  26. 26 – Hubel & Wiesel's model of the visual cortex
  27. 27 – Invariance and equivariance of ConvNets
  28. 28 – In the next episode…
  29. 29 – Training time, iteration cycle, and historical remarks

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