This shows you the differences between two versions of the page.
Both sides previous revision Previous revision Next revision | Previous revision Next revision Both sides next revision | ||
schedule [2015/07/29 12:13] asa |
schedule [2016/10/31 09:37] asa |
||
---|---|---|---|
Line 3: | Line 3: | ||
---- | ---- | ||
- | Video of the lectures will be available via the echo360 portal of the course | + | Video of the lectures is available via the echo360 portal of the course. A link is provided on Canvas and Piazza. |
- | ===== August ===== | ||
- | |< 100% 17% 40% 20% 13% >| | + | |< 100% 18% 40% 19% 13% >| |
| ^ Topics ^ Reading ^ Assignments ^ | | ^ Topics ^ Reading ^ Assignments ^ | ||
- | ^ Week 1: August 26-30 | | | | | + | ^ Week 1: August 23,25 | | | | |
| Tuesday | Course introduction ({{wiki:01_intro.pdf | slides}}). | Sections 1.1 and 1.2 in the textbook | | | | Tuesday | Course introduction ({{wiki:01_intro.pdf | slides}}). | Sections 1.1 and 1.2 in the textbook | | | ||
- | | Thursday | Course introduction (continued). Short intro to python [ [[notes:python_getting_started | notes]] ]. | Prolog and Chapter 1 | | | + | | Thursday | Course introduction (continued). | Sections 1.1 and 1.2 in the textbook | [[assignments:assignment1| Assignment 1]] is available. | |
+ | ^ Week 2: August 30, Sept 1 | | | | | ||
+ | | Tuesday | Linear models ({{wiki:02_linear.pdf | slides}}). Short intro to LaTex and python [ [[notes:python_getting_started | notes]] ]. | Chapter 1, and Section 3.1 in the textbook | | | ||
+ | | Thursday | Linear models and the perceptron algorithm (cont). | Chapter 1, and Section 3.1 in the textbook | [[assignments:assignment2| Assignment 2]] is available. | | ||
+ | ^ Week 3: September 6,8 | | | | | ||
+ | | Tuesday | [[code:perceptron | code]] for the perceptron. Linear regression ({{wiki:03_linear_regression.pdf | slides}}). | Chapter 3.2 | | | ||
+ | | Thursday | Logistic regression ({{wiki:04_logistic_regression.pdf | slides}}). | Chapter 3.3 | | | ||
+ | ^ Week 4: September 13,15 | | | | | ||
+ | | Tuesday | Overfitting ({{wiki:05_overfitting.pdf | slides}}) | Chapters 2.3,4.1 | | | ||
+ | | Thursday | Regularization and model selection ({{wiki:06_regularization.pdf | slides}}) | Chapter 4 | | ||
+ | ^ Week 5: September 20,22 | | | | | ||
+ | | Tuesday | Model selection and cross validation (continued). Code for [[code:cross_validation | cross validation]] in scikit-learn | Chapter 4 | [[assignments:assignment3| Assignment 3]] is available. | | ||
+ | | Thursday | Discussion of classifier evaluation and metrics for classifier accuracy; here's the code for computing/plotting [[code:roc|ROC curves]]. Short intro to large margin classification ({{wiki:07_svm.pdf | slides}}) | Chapter e-8 | | | ||
+ | ^ Week 6: September 27,29 | | | | | ||
+ | | Tuesday | Large margin classification: support vector machines ({{wiki:07_svm.pdf | slides}}) | Chapter e-8 | | | ||
+ | | Thursday | The dual for the hard margin and soft margin SVM ({{wiki:07_svm.pdf | slides}}); [[code:demo2d|svm demo]]; Expressing SVMs in terms of error + regularization ({{wiki:07_svm_unbalanced.pdf | slides}}) | Chapter e-8 | | | ||
+ | ^ Week 7: October 4,7 | | | | | ||
+ | | Tuesday | SVMs for unbalanced data ({{wiki:07_svm_unbalanced.pdf | slides}}) Nonlinear classification with kernels ({{wiki:08_kernels.pdf | slides}}) | Chapter e-8 | [[assignments:assignment4| Assignment 4]] is available. | | ||
+ | | Thursday | Kernels (continued); [[code:model_selection|model selection]] using grid search | Chapter e-8 | | | ||
+ | ^ Week 8: October 11,13 | | | | | ||
+ | | Tuesday | Model selection ({{wiki:09_evaluation.pdf | slides}}). Multi-class classification ({{wiki:10_multi_class.pdf | slides}}), a [[code:multi_class| demo]] of multi-class classification | Chapter 4.3.3 | | | ||
+ | | Thursday | Neural networks ({{wiki:11_nn.pdf | slides}}) | Chapter e-7 | | | ||
+ | ^ Week 9: October 18,20 | | | | | ||
+ | | Tuesday | Neural networks (continued); neural network [[code:neural_networks| demo]] | Chapter e-7 | [[assignments:assignment5| Assignment 5]] is available. | | ||
+ | | Thursday | Neural networks (continued); deep learning ({{wiki:12_deep_networks.pdf | slides}}) | Chapter e-7 | | | ||
+ | ^ Week 10: October 25,27 | | | | | ||
+ | | Tuesday | Deep learning (continued) | Chapter e-7 | | | ||
+ | | Thursday | [[code:theano| Theano]]. Features ({{wiki:13_features.pdf | slides}}) | Chapter e-9 | | | ||
+ | ^ Week 11: November 1,3 | | | | | ||
+ | | Tuesday | Feature selection ({{wiki:13_features.pdf | slides}}) | Chapter e-9 | | | ||
+ | | Thursday | Principal components analysis (PCA) | Chapter e-9 | | | ||
+ | ... | ||
+ | |< 100% 18% 40% 19% 13% >| | ||
+ | |||
+ | ^ Week 15: December 6,8 | | | | | ||
+ | | Tuesday | Course summary | | | | ||
+ | | Thursday | Poster session | | | | ||
+ | | ||
+ | |||
+ | |||
+ | | ||
| |