Date | In-Class Topic | Assignment Due | Lecture |
Tue 25. Aug | 1. Machine Learning as a Black Box |
|
[Video AB]
[PDF ABC]
|
|
Readings:
- Murphy 1
- (Assumed background) Murphy Chapter 2
|
Thu 27. Aug | 2. Logistic Regression | |
[Video AB]
[PDF ABC]
|
|
Readings:
- Murphy 3, 8 - 8.4
- (Assumed Background) Murphy Chapter 2
Optional:
|
Tue 1. Sep | 3. Stochastic Gradient Optimization for Logistic Regression | |
[Video A]
[PDF AB]
|
|
Readings:
|
Thu 3. Sep | CLASS CANCELLED
| |
|
Fri 4. Sep | Homework 1 Due | K Nearest Neighbors |
|
Tue 8. Sep | 4. Feature Engineering | |
[Video A] [Script] [PDF, data]
|
|
Readings:
|
Thu 10. Sep | 5. PAC Learnability | |
[Video A] [PDF AB]
|
|
Readings:
|
Fri 11. Sep | Homework 2 Due | Logistic Regression |
|
Tue 15. Sep | 6. VC / Rademacher Complexity |
|
[Video A] [PDF AB]
|
|
Readings:
|
Thu 17. Sep | 7. Support Vector Machines | |
[Video A] [PDF AB]
|
|
Readings:
|
Fri 18. Sep | Homework 3 Due | Feature Engineering |
|
Tue 22. Sep | 8. Dual/Slack SVMs | |
[Video A]
[PDF AB]
|
|
Readings:
|
Thu 24. Sep | 9. Kernel Methods | |
[Video AB]
[PDF ABC] [Script]
|
|
Readings:
|
Tue 29. Sep | 10. Boosting | |
[Video A]
[PDF AB]
|
|
Readings:
|
Thu 1. Oct | 11. Regression | |
[Video A] [PDF AB] [Data]
|
|
Readings:
|
Fri 2. Oct | Homework 4 Due | Learnability |
|
Tue 6. Oct | 12. Sparse Regression | |
[Video A] [PDF A]
|
|
Readings:
|
Thu 8. Oct | CLASS CANCELLED | |
|
Fri 9. Oct | Homework 5 Due | SVM |
|
Tue 13. Oct | CLASS CANCELLED | |
|
Thu 15. Oct | 13. Ranking and Multi-class Classification | |
[Video AB] [PDF ABC] [Data Train/Test]
|
|
Readings:
Optional:
|
Fri 16. Oct | Homework 6 Due | Boosting |
|
Tue 20. Oct | Review / Catchup | |
|
Thu 22. Oct | Midterm | |
|
Tue 27. Oct | 14. Deep Learning I [No video—guest lecture by Mike Mozer] | |
[Video A] [PDF A]
|
|
Readings:
|
Thu 29. Oct | 15. Deep Learning II [No video—guest lecture by Mike Mozer] | |
[Video A]
[PDF A]
|
|
Readings:
|
Fri 30. Oct | Project Milestone |
Project Proposal
|
Tue 3. Nov | 16. K-Means / Mixture Models |
|
[Video A] [PDF AB]
|
|
Readings:
- CIML chapters 13.
- Murphy 11.1-11.4
|
Thu 5. Nov | 17. Dirichlet Process / Gibbs Sampling
| |
[Video A] [PDF AB]
|
|
Readings:
- Murphy 24.1-24.2
- Murphy 25.1-25.2
Optional:
|
Tue 10. Nov | 18. Topic Models | |
[Video A] [PDF AB]
|
|
Readings:
|
Thu 12. Nov | 19. Variational Inference |
|
[Video A] [PDF AB]
|
|
Readings:
- Murphy 21
- Murphy 27.3.5-27.4
|
Fri 13. Nov | Project Milestone | First Deliverable |
|
Tue 17. Nov | 20. Hidden Markov Models | |
[Video A]
[PDF AB]
|
|
Readings:
|
Thu 19. Nov | 21. Online Learning and Structured
Perceptron | |
[Video A]
[PDF AB]
|
|
Readings:
|
Tue 1. Dec | 22. Reinforcement Learning |
|
[Video A]
[PDF AB]
|
|
Readings:
|
Thu 3. Dec | 23. Social History of Machine Learning [No
video—in-class discussion] | |
|
|
Optional:
|
Fri 4. Dec | Homework 7 Due | Variational Bayes |
|
Tue 8. Dec | Final Project Workshop | |
|
Thu 10. Dec | Final Exam Distributed | |
|
Tue 15. Dec, 1:30 | Final Exam / Oral | |
Final Report
|