Machine Learning - Spring 2024

Machine Learning - Spring 2024

UofU Data Science via YouTube Direct link

Machine Learning: Lecture 14b: Positive and Negative Learnability Results

22 of 41

22 of 41

Machine Learning: Lecture 14b: Positive and Negative Learnability Results

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Machine Learning - Spring 2024

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  1. 1 Machine Learning: Lecture 1: Introduction & Course Information
  2. 2 Machine Learning: Lecture 2: Supervised Learning: The setup
  3. 3 Machine Learning: Lecture 3a: Supervised Learning - The Setup (continued)
  4. 4 Machine Learning - Lecture 3b: Decision Trees
  5. 5 Machine Learning: Lecture 4: Learning decision trees
  6. 6 Machine Learning: Lecture 5: Decision trees (continued)
  7. 7 Machine Learning: Lecture 6a: Decision trees (continued)
  8. 8 Machine Learning: Lecture 6b: Linear Models
  9. 9 Machine Learning: Lecture 7a: Linear Classifier Expressiveness
  10. 10 Machine Learning: Lecture 7b: How good is a learning algorithm?
  11. 11 Machine Learning: Lecture 7c: Online Learning
  12. 12 Machine Learning: Lecture 8: Mistake Bound Learning
  13. 13 Machine Learning: Lecture 9a: On representations and learning
  14. 14 Machine Learning: Lecture 9b: Perceptron
  15. 15 Machine Learning: Lecture 10: Perceptron mistake bound
  16. 16 Machine Learning: Lecture 11: Linear Regression
  17. 17 Machine Learning: Lecture 12a: Introduction to Computational Learning Theory
  18. 18 Machine learning: Lecture 12b: PAC learning introduction
  19. 19 Machine learning: Lecture 13a: PAC learning
  20. 20 Machine Learning: Lecture 13b: Occam's Razor for consistent learners
  21. 21 Machine Learning: Lecture 14a: Occam's Razor (continued)
  22. 22 Machine Learning: Lecture 14b: Positive and Negative Learnability Results
  23. 23 Machine Learning: Lecture 15a: Positive and Negative Learnability Results
  24. 24 Machine Learning: Lecture 16: Agnostic Learning
  25. 25 Machine learning: Lecture 17: Shattering
  26. 26 Machine Learning: Lecture 18a: The VC Dimension
  27. 27 Machine Learning: Lecture 18b: Boosting
  28. 28 Machine Learning: Lecture 19: Boosting & Ensembles
  29. 29 Machine Learning: Lecture 20: Support Vector Machines
  30. 30 Machine learning: Lecture 21a: SVMs (continued)
  31. 31 Machine learning: Lecture 21b: Stochastic Gradient Descent for SVMs
  32. 32 Machine Learning: Lecture 22a: SGD for SVMs
  33. 33 Machine Learning: Lecture 22b: Loss Minimization
  34. 34 Machine Learning: Lecture 23: Bayesian Learning
  35. 35 Machine Learning: Lecture 24a: Maximum Likelihood Estimation for Regression
  36. 36 Machine Learning: Lecture 24b: Logistic regression
  37. 37 Machine Learning: Lecture 25: Neural Networks
  38. 38 Machine Learning: Lecture 26: Backpropagation
  39. 39 Machine Learning: Lecture 27a: Practical issues with Neural Networks
  40. 40 Machine Learning: Lecture 27b: Generative & Discriminative learning
  41. 41 Machine Learning: Lecture 28: Practical advice for building machine learning applications

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