Neural Nets for NLP 2020 - Convolutional Neural Networks for Text

Neural Nets for NLP 2020 - Convolutional Neural Networks for Text

Graham Neubig via YouTube Direct link

Dynamic Filter CNN (e.g. Brabandere et al. 2016)

23 of 30

23 of 30

Dynamic Filter CNN (e.g. Brabandere et al. 2016)

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Neural Nets for NLP 2020 - Convolutional Neural Networks for Text

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  1. 1 Intro
  2. 2 Outline
  3. 3 An Example Prediction Problem: Sentiment Classification
  4. 4 Continuous Bag of Words (CBOW)
  5. 5 Deep CBOW
  6. 6 Why Bag of n-grams?
  7. 7 What Problems
  8. 8 Neural Sequence Models
  9. 9 Definition of Convolution
  10. 10 Intuitive Understanding
  11. 11 Priori Entailed by CNNS
  12. 12 Concept: 2d Convolution
  13. 13 Concept: Stride
  14. 14 Concept: Padding
  15. 15 Three Types of Convolutions
  16. 16 Concept: Multiple Filters
  17. 17 Concept: Pooling
  18. 18 Overview of the Architecture
  19. 19 Embedding Layer
  20. 20 Conv. Layer
  21. 21 Pooling Layer
  22. 22 Output Layer
  23. 23 Dynamic Filter CNN (e.g. Brabandere et al. 2016)
  24. 24 CNN Applications
  25. 25 NLP (Almost) from Scratch (Collobert et al. 2011)
  26. 26 CNN-RNN-CRF for Tagging (Ma et al. 2016) . A classic framework and de-facto standard for
  27. 27 Why Structured Convolution?
  28. 28 Understand the design philosophy of a model
  29. 29 Structural Bias
  30. 30 component entail?

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