Probabilistic Methods for Classification - 2009

Probabilistic Methods for Classification - 2009

Center for Language & Speech Processing(CLSP), JHU via YouTube Direct link

Naive Base

9 of 27

9 of 27

Naive Base

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Probabilistic Methods for Classification - 2009

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  1. 1 Introduction
  2. 2 Information Extraction
  3. 3 Semisupervised Learning
  4. 4 Outline
  5. 5 Supervised Machine Learning
  6. 6 Estimation
  7. 7 Classification
  8. 8 Document Classification
  9. 9 Naive Base
  10. 10 Maximum likelihood estimation
  11. 11 Sum over data
  12. 12 Recap
  13. 13 Conditional Log Linear Models
  14. 14 Graphical Models
  15. 15 Maximum Entropy Models
  16. 16 GradientBased Optimization
  17. 17 Naive Phase vs Maximum Entropy
  18. 18 Conditional Random Field
  19. 19 Hidden Markov Model
  20. 20 Model Framework
  21. 21 Model Structure
  22. 22 Conditional Random Field Models
  23. 23 Dependency Parsing
  24. 24 Generalized Expectations Criteria
  25. 25 KL Divergence
  26. 26 GE Estimation
  27. 27 Label Regularization

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