Difference between revisions of "Syllabus for Machine Learning 10-601 in Fall 2014"
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| Thurs 9/25 || Neural networks and Deep Belief Networks || William || ''slides will be updated'' | | Thurs 9/25 || Neural networks and Deep Belief Networks || William || ''slides will be updated'' | ||
|- | |- | ||
− | | Mon-Tues 9/30-10/1 || SVMs and Margin Classifiers || Ziv || Ziv's also lecturing in his class on | + | | Mon-Tues 9/29-30 || SVMs and Margin Classifiers 1 || Ziv || Ziv's also lecturing in his class on Mon |
+ | |- | ||
+ | | Wed-Thurs 10/1-2 || SVMs and Margin Classifiers 2 || Ziv || Ziv's also lecturing in his class on Wed | ||
|- | |- | ||
| M 9/30 || [[10-601 K-NN And Trees|K-NN, Decision Trees, and Rule Learning]] || William || | | M 9/30 || [[10-601 K-NN And Trees|K-NN, Decision Trees, and Rule Learning]] || William || |
Revision as of 16:13, 11 July 2014
This is the syllabus for Machine Learning 10-601 in Fall 2014.
Schedule
Date of lecture | Topic | Lecturer | Assignment/Notes | |
---|---|---|---|---|
Tues 9/2 | Overview and Intro to Probability | William | ||
Thurs 9/4 | Classification and K-NN | William | slides will be updated | |
Tues 9/9 | Decision Trees, and Rule Learning | William | slides will be updated | |
Thurs 9/11 | The Naive Bayes algorithm | William | ||
Tues 9/16 | Linear Regression | William | slides will be updated | |
Thurs 9/18 | Logistic Regression | William | ||
Mon-Tues 9/22-23 | The Perceptron algorithm | William | William's also lecturing in Ziv's class on Mon | |
Thurs 9/25 | Neural networks and Deep Belief Networks | William | slides will be updated | |
Mon-Tues 9/29-30 | SVMs and Margin Classifiers 1 | Ziv | Ziv's also lecturing in his class on Mon | |
Wed-Thurs 10/1-2 | SVMs and Margin Classifiers 2 | Ziv | Ziv's also lecturing in his class on Wed | |
M 9/30 | K-NN, Decision Trees, and Rule Learning | William | ||
W 10/2 | Evaluating and Comparing Classifiers Experimentally | William | HW5: Compare classifiers Download: data1 data2 (due Oct. 9th (Before lecture) via Autolab) Example code: [1] | |
M 10/7 | PAC Learning | Eric (William out) | ||
W 10/9 | Bias-Variance Decomposition | Eric (William out) | HW6: PAC and VC dimension | |
M 10/14 | Ensemble Methods 1 | William | ||
W 10/16 | Ensemble Methods 2 | William | Project description: [2] and Project Milestone 1 | |
M 10/21 | Unsupervised Learning: k-Means and Mixtures | Eric | ||
W 10/23 | Unsupervised Learning: Dimensionality Reduction | Eric |
Project milestone 2: Description, Classifier assignments, and Datasets for Milestone 2 | |
M 10/28 | Semi-Supervised Learning | William | ||
W 10/30 | Collaborative Filtering and Matrix Factorization | William | Project milestone 3 Milestone3 Handout | |
M 11/4 | Graphical Models 1 | Eric | ||
W 11/6 | Graphical Models 2 | Eric | HW7: Graphical Models (due Nov. 13th before class via BlackBoard) | |
M 11/11 | HMMS, Sequences, and Structured Output Prediction | William | ||
W 11/13 | d-separation, Explaining away, and Topic Models | William | Project milestone 4 | |
M 11/18 | Network Models | Eric | ||
W 11/20 | Review Session/Special Topics | Eric | ||
M 11/25 | Not-quite-final Exam | |||
W 11/27 | No class - Thanksgiving | |||
M 12/2 | Markov Decision Processes and Reinforcement Learning | Eric | ||
W 12/4 | Scalable Learning and Parallelization | William | Milestones 5-6 Description | |
Mon 12/9 | Milestone 5 due | |||
Tue 12/10 | Milestone 6 (writeup) due |
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.
Section-by-Section
Linear Classifiers
A probabilistic view of linear classification:
Another view of classification:
- 10-601 Introduction to Linear Algebra
- 10-601 Perceptrons and Voted Perceptrons
- 10-601 Voted Perceptrons and Support Vector Machines
Summary: