Difference between revisions of "Syllabus for Machine Learning 10-601 in Fall 2014"
From Cohen Courses
Jump to navigationJump to searchLine 56: | Line 56: | ||
| Mon 11/17 ('''Wm''') || Tues 11/18 (Wm) || [[10-601 Network Models| Network Models]] || | | Mon 11/17 ('''Wm''') || Tues 11/18 (Wm) || [[10-601 Network Models| Network Models]] || | ||
|- | |- | ||
− | | Wed 11/19 ('''Wm''') || Thur 11/20 (Wm)|| Semi-supervised learning || | + | | Wed 11/19 ('''Wm''') || Thur 11/20 (Wm)|| Semi-supervised learning || ''possible guest lecture'' |
|- | |- | ||
| Mon 11/24 ('''Wm''') || Tues 11/25 (Wm) || [[10-601 Big Data|Scalable Learning and Parallelization]] || | | Mon 11/24 ('''Wm''') || Tues 11/25 (Wm) || [[10-601 Big Data|Scalable Learning and Parallelization]] || |
Revision as of 17:47, 21 July 2014
This is the syllabus for Machine Learning 10-601 in Fall 2014.
Schedule
Lecture for 601-A | Lecture for 601-B | Topic | Assignment/Notes |
---|---|---|---|
Wed 8/27 (Ziv) | Tues 9/2 (Wm) | Course Overview and Introduction to Probability | |
Wed 9/3 (Ziv) | Thur 9/4 (Wm) | Classification and K-NN | slides will be updated |
Mon 9/8 (Ziv) | Tues 9/9 (Wm) | Decision Trees, and Rule Learning | slides will be updated |
Wed 9/10 (Ziv) | Thur 9/11 (Wm) | The Naive Bayes algorithm | |
Mon 9/15 (Ziv) | Tues 9/16 (Wm) | Linear Regression | slides will be updated |
Wed 9/17 (Ziv) | Thur 9/18 (Wm) | Logistic Regression | |
Mon 9/22 (Wm) | Tues 9/23 (Wm) | The Perceptron algorithm | |
Wed 9/24 (Ziv) | Thur 9/25 (Wm) | Neural networks and Deep Belief Networks | slides will be updated |
Mon 9/29 (Ziv) | Tues 9/30 (Ziv) | SVMs and Margin Classifiers 1 | |
Wed 10/1 (Ziv) | Thur 10/2 (Ziv) | SVMs and Margin Classifiers 2 | |
Mon 10/6 (Ziv) | Tues 10/7 (Wm) | Evaluating and Comparing Classifiers Experimentally | |
Wed 10/8 (Ziv) | Thus 10/9 (Wm) | PAC Learning | wiki page to be updated |
Mon 10/13 (Wm) | Tues 10/14 (Wm) | Bias-Variance Decomposition | wiki page to be updated |
Wed 10/16 (Ziv) | Thur 10/16 (Wm) | Ensemble Methods 1, Ensemble Methods 2 | slides to be updated |
Mon 10/20 (Ziv) | Tues 10/21 (Wm) | Unsupervised Learning: k-Means and Mixtures | potential guest lecture |
Wed 10/22 (Ziv) | Thur 10/23 (Wm) | Unsupervised Learning: Dimensionality Reduction | |
Mon 10/27 (Ziv) | Tues 10/28 (Wm) | Review session | slides to be posted |
Thurs 10/30 | Thur 10/30 | Mid-term Exam | TBA: room and/or time may be different |
Mon 11/3 (Ziv) | Tues 11/4 (Ziv) | Graphical Models 1 | wiki to be updated |
Wed 11/5 (Ziv) | Thur 11/6 (Ziv) | Graphical Models 2 | wiki to be updated |
Mon 11/10 (Ziv) | Tues 11/11 (Ziv) | HMMS and Sequences | |
Wed 11/13 (Wm) | Thur 11/13 (Wm) | Matrix Factorization and Topic Models | slides to be updated |
Mon 11/17 (Wm) | Tues 11/18 (Wm) | Network Models | |
Wed 11/19 (Wm) | Thur 11/20 (Wm) | Semi-supervised learning | possible guest lecture |
Mon 11/24 (Wm) | Tues 11/25 (Wm) | Scalable Learning and Parallelization | |
Wed 11/26 | Thur 11/27 | No class - Thanksgiving | |
Tues 12/2 (Wm) | Tues 12/2 (Wm) | Learning and NLP | slides to be updated |
Wed 12/3 (Ziv) | Thurs 12/4 (Ziv) | Learning and Biology |
To other instructors: if you'd like to use any of the materials found here, you're absolutely welcome to do so, but please acknowledge their ultimate source somewhere.