Continuous State Machines and Grammars for Linguistic Structure Prediction

Continuous State Machines and Grammars for Linguistic Structure Prediction

Simons Institute via YouTube Direct link

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22 of 23

22 of 23

Additional Details

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Continuous State Machines and Grammars for Linguistic Structure Prediction

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  1. 1 Intro
  2. 2 Linguistic Structure Example: Dependencies
  3. 3 "Global" or "Graph-Based" Paradigm
  4. 4 Greedy Parsing with a Stack
  5. 5 Recurrent Neural Network
  6. 6 Stack RNN
  7. 7 Stack LSTM Parser
  8. 8 Token and Tree Representations
  9. 9 Learning
  10. 10 Results (Labeled Attachment Score)
  11. 11 Variations
  12. 12 Vanation: Many Languages, One Parser (Ammar et al., TACL 2016)
  13. 13 Stack LSTM MALOPA
  14. 14 Tiny Target Treebank: Results
  15. 15 Zero Target Treebank: Results
  16. 16 Variation: Add Semantics (Swayamcipta et al., CONLL 2016)
  17. 17 Linguistic Structure Example: Semantic Dependencies
  18. 18 Variation: RNN Grammars (Dyer et al., NAACL 2016, Kuncoro et al., EACL 2017)
  19. 19 Another Linguistic Structure Example: Phrase-Structure Tree
  20. 20 Better Dependency Parsers?
  21. 21 Tree & String Generation with a Stack
  22. 22 Additional Details
  23. 23 Conclusions

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