Warning: Declaration of action_plugin_tablewidth::register(&$controller) should be compatible with DokuWiki_Action_Plugin::register(Doku_Event_Handler $controller) in /s/bach/b/class/cs545/public_html/fall16/lib/plugins/tablewidth/action.php on line 93
schedule [CS545 fall 2016]

User Tools

Site Tools


schedule

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
Next revision
Previous revision
Next revision Both sides next revision
schedule [2013/11/19 14:56]
asa
schedule [2016/11/15 13:46]
asa
Line 3: Line 3:
 ---- ----
  
-Video of the lectures is available via the [[http://​echo.colostate.edu:​8080/​ess/​portal/​section/​0857d976-41e9-4ffd-a18d-144bc57b08ea | 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}}). ​      ​| ​Prolog ​and Chapter ​1 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}}); feature selection[[[code:​feature_selection| demo]]. | [[http://​www.jmlr.org/​papers/​v3/​guyon03a.html | Introduction to Variable and Feature Selection]]. ​  ​| ​   | 
 +| Thursday ​                 | Principal components analysis (PCA) ({{wiki:​14_pca.pdf | slides}}) [[code:​pca|demo of pca]]  | Chapter e-9  | [[assignments:​assignment6| Assignment 6]] is available. | 
 +^ Week 12:  November 8,10    |                           ​| ​                     |               | 
 +| Tuesday ​                 | Nearest neighbor methods ({{wiki:​15_nearest_neighbors.pdf | slides}}); [[code:​nearest_neighbors | demo]]. | Chapter e-6  |    | 
 +| Thursday ​                 | Clustering ({{wiki:​16_clustering.pdf | slides}}) kmeans [[http://​scikit-learn.org/​stable/​auto_examples/​cluster/​plot_kmeans_assumptions.html | demo]] ​ | Chapter 10 in [[http://​www-bcf.usc.edu/​~gareth/​ISL/​ | introduction to statistical learning]] ​ |   | 
 +^ Week 12:  November 15,17    |                           ​| ​                     |               | 
 +| Tuesday ​                 | Naive Bayes classification ({{wiki:​18_naive_bayes.pdf | slides}}); [[code:​naive_bayes | demo]]. |    |    | 
 +| Thursday ​                 |   | TBD  |   |
  
 +...
 +|< 100% 18% 40% 19% 13% >|
  
-===== September ===== +^ Week 15:  ​December ​6,8    |                           ​| ​                     |               | 
- +| Tuesday ​                 Course summary ​|   ​| ​  | 
-|< 100% 17% 40% 20% 13% >| +| Thursday ​                ​Poster session ​|    |   | 
-|                          ^  Topics ​                   ^   ​Reading ​           ^  Assignments ​ ^ +                                                             
-^ Week 2:  ​Sept 2-   ​| ​                          ​| ​                     |               | +                                                 ​ 
-| Tuesday ​             | Two simple linear models: ​ the closest centroid algorithm and the perceptron algorithm ({{wiki:​02_linear.pdf | slides}}) ​ | Chapter 7  | [[assignments:​assignment1 | assignment 1]] is out      | +                                                   ​ 
-| Thursday ​            | Evaluating and using ML classifiers({{wiki:​03_classifier_evaluation.pdf | slides}}). ​ And here's a [[notes:​evaluating_classifier_performance | demo]] of the process in PyML.  | Chapter 2 |   | +                  
-^ Week 3:  Sept 9-13    |                           ​| ​                     |               | +
-| Tuesday ​             | Overview of Latex. Go over the code for the [[code:​perceptron|perceptron]] classifier. ​  | Chapter 2,7  |       | +
-| Thursday ​            | Classifier evaluation (continued) ​ | Chapter 2  |   | +
-^ Week 4:  Sept 16-20    |                           ​| ​                     |               | +
-| Tuesday ​             | Linear regression ({{wiki:​04_linear_regression.pdf | slides}}). ​  | Chapter 7  |       | +
-| Thursday ​            | Linear regression - continued (6 slides were added to tuesday'​s batch). ​ Here's code for [[code:​ridge_regression|ridge regression]] that you can try out in PyML. | Chapter 7  | Assignment 1 is due. [[assignments:​assignment2 | Assignment 2]] is out   | +
-^ Week 5:  Sept 23-27    |                           ​| ​                     |               | +
-| Tuesday ​             | Large margin classifiers: ​ support vector machines ({{wiki:​05_svm.pdf | slides}}). ​  | Chapter 7  |       | +
-| Thursday ​            | support vector machines (continued). | Chapter 7  |     | +
- +
-===== October ===== +
- +
-|< 100% 17% 40% 20% 13% >| +
-|                          ^  Topics ​                   ^   ​Reading ​           ^  Assignments ​ ^ +
-^ Week 6:  Sept 30 - Oct 4    |                           ​| ​                     |               | +
-| Tuesday ​             | SVMs and regularization;​ SVMs for unbalanced data ({{wiki:​05_svm_unbalanced.pdf | slides}}) ​ | A nice tutorial on SVMs:  [[http://​www.cs.colostate.edu/​~asa/​pdfs/​howto.pdf| A user's guide to support vector machines]]. ​ |   | +
-| Thursday ​            | Extending SVMs to nonlinear classification ({{wiki:​06_kernels.pdf | slides}}). ​ Here's a nice [[http://​www.youtube.com/​watch?​v=3liCbRZPrZA|video]] that illustrates the idea. | Chapter 7 | Assignment 2 is due on Friday ​ | +
-^ Week 7:  Oct 7 - 11    |                           ​| ​                     |               | +
-| Tuesday ​             | Kernel classifiers: ​ kernel versions of the perceptron and linear regression ({{wiki:​07_kernel_algorithms.pdf | slides}}) and multi-class classification with binary classifiers ({{wiki:​08_multi_class.pdf|slides}}) | Chapter 7.5, Chapter 3  | [[assignments:​assignment3 | Assignment 3]] is out  | +
-| Thursday ​             | Evaluating and using ML classifiers:​ model selection ({{wiki:​09_evaluation.pdf | slides}}) ​ | paper on [[http://​citeseerx.ist.psu.edu/​viewdoc/​download?​doi=10.1.1.79.2501&​rep=rep1&​type=pdf| Dataset selection]] ​ |   | +
-^ Week 8:  Oct 14 - 18    ​| ​                          ​| ​                     |               | +
-| Tuesday ​             More on kernel functions ({{wiki:​10_more_kernels.pdf | slides}}) ​|   ​| ​  | +
-| Thursday ​             Kernel methods for protein-protein interactions ({{wiki:​ppi545.pdf ​slides}}) | A. Ben-Hur and W.S. Noble. [[ http://​www.cs.colostate.edu/​~asa/​pdfs/​sppii.pdf|Kernel methods for predicting protein-protein interactions]]. Bioinformatics 21(Suppl. 1): i38-i46, 2005.   ​| ​  | +
-^ Week 9:  Oct 21 - 25    |                           ​| ​                     |               | +
-| Tuesday ​             | Distance based models and nearest neighbor classifiers ({{wiki:​11_distances.pdf | slides}}) | Chapter 8  | Assignment 3 is due. [[assignments:​assignment4 | Assignment 4]] is out  | +
-| Thursday ​             | Distance based clustering ({{wiki:​12_clustering.pdf | slides}}) | Chapter 8 |   | +
-^ Week 10:  Oct 28 - Nov 1    |                           ​| ​                     |               | +
-| Tuesday ​             | Probability theory, probabilistic models, and naive Bayes classification ({{wiki:​13_naive_bayes.pdf | slides}}) | Chapter 9  | Assignment 4 is due. [[assignments:​assignment5 | Assignment 5]] is out  | +
-| Thursday ​             | Continue discussion of naive Bayes. ​ Obtaining probabilities from linear classifiers ({{wiki:​14_callibration.pdf | slides}}) | Chapter 7.4 |   | +
- +
-===== November ===== +
- +
-|< 100% 17% 40% 20% 13% >| +
-^ Week 11:  Nov 4 - Nov 8    |                           ​| ​                     |               | +
-| Tuesday ​             | Logistic regression ({{wiki:​15_logistic_regression.pdf | slides}}) | Chapter 9  | Assignment 4 is due. [[assignments:​assignment5 | Assignment 5]] is out  | +
-| Thursday ​             | Features and feature selection ({{wiki:​16_features.pdf | slides}}) | Chapter 10 | Project proposal is due on friday ​ | +
-^ Week 12:  Nov 11 - Nov 15    |                           ​| ​                     |               | +
-| Tuesday ​             | Potential [[feature_selection_bias| bias]] when using feature selection. Principal components analysis (PCA) ({{wiki:​17_pca.pdf | slides}}) | Chapter 10  |   | +
-| Thursday ​             | Decision trees ({{wiki:​18_decision_trees.pdf | slides}}) | Chapter 5 |   | +
-^ Week 13:  Nov 18 - Nov 22    |                           ​| ​                     |               | +
-| Tuesday ​             | Ensemble methods ({{wiki:​19_ensembles.pdf | slides}}) | Chapter 11  |   |+
   ​   ​
schedule.txt · Last modified: 2016/12/05 10:38 by asa