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 | ||
start [2017/01/30 08:30] anderson |
start [2017/03/03 08:56] anderson [February] |
||
---|---|---|---|
Line 7: | Line 7: | ||
===== Announcements ===== | ===== Announcements ===== | ||
- | **January 25:** For Assignment 1 you must standardize the data in X. An update has been added to the assignment description. | + | **Feb 28:** In A3, my sample output had incorrect validation errors. |
- | **January 20:** Assignment 1 (A1) is now due Monday, January 30th, at 10 PM. | + | **Feb 27:** In the Schedule next to the A2 assignment you will find a link to good examples of reports submitted for A2. |
Lecture videos are available at this [[https:// | Lecture videos are available at this [[https:// | ||
Line 26: | Line 26: | ||
|< 100% 10% 20% 30% 20% 20% >| | |< 100% 10% 20% 30% 20% 20% >| | ||
^ Week ^ Topic ^ Material | ^ Week ^ Topic ^ Material | ||
- | | Week 3:\\ Jan 30 - Feb 3 | Probabilistic Linear Regression. Ridge regression. Data partitioning. On-line, incremental regression. Regression with fixed nonlinearities. | [[http:// | + | | Week 3:\\ Jan 30 - Feb 3 | Probabilistic Linear Regression. Ridge regression. Data partitioning. On-line, incremental regression. |
- | /* \\ Here are five examples of good solutions: [[http:// | + | | Week 4:\\ Feb 6 - Feb 10 | Regression with fixed nonlinearities. Nonlinear regression with neural networks.\\ Feb 10: Guest Speaker [[https:// |
- | */ | + | | Week 5:\\ Feb 13 - Feb 17 | Neural Networks |
+ | | Week 6:\\ Feb 20 - Feb 24 | Neural Networks. Autoencoders. Guest lectures by our GTA, Jake Lee. | [[http:// | ||
+ | | Week 7:\\ Feb 27 - Mar 3 | Recurrent Neural Networks. | ||
- | /* | ||
- | |< 100% 20% 20% 30% 10% 20% >| | ||
- | ^ Week ^ Topic ^ Material | ||
- | | Week 3:\\ Feb 1 - Feb 5 | Ridge regression. Data partitioning. On-line, incremental regression. Regression with fixed nonlinearities. | ||
- | | Week 4:\\ Feb 8 - Feb 12 | Nonlinear regression with neural networks. | ||
- | | Week 5:\\ Feb 15 - Feb 19 | Autoencoders. Recurrent neural networks. | ||
- | | Week 6:\\ Feb 22 - Feb 26 | Classification, | ||
- | |||
- | ===== March ===== | ||
- | |||
- | |< 100% 20% 20% 30% 10% 20% >| | ||
- | ^ Week ^ Topic ^ Material | ||
- | | Week 7:\\ Feb 29 - Mar 5 | Classification, | ||
- | | Week 8:\\ Mar 7 - Mar 11 | Classification with neural networks. | ||
- | | Mar 14 - Mar 18 | Spring Break! | ||
- | | Week 9:\\ Mar 21 - Mar 25 | Bottleneck, and deep networks. | ||
- | | Week 10:\\ Mar 28 - Apr 1 | Convolutional neural nets. Clustering. | ||
- | |||
- | ===== April ===== | ||
- | |||
- | |< 100% 20% 20% 30% 10% 20% >| | ||
- | ^ Week ^ Topic ^ Material | ||
- | | Week 11:\\ Apr 4 - Apr 8 | Reinforcement Learning | ||
- | | Week 12:\\ Apr 11 - Apr 15 | Dimensionality reduction. | ||
- | | Week 13:\\ Apr 18 - Apr 22 | Nonparametric methods | ||
- | | Week 14:\\ Apr 25 - Apr 29 | | [[http:// | ||
- | |||
- | |||
- | |||
- | ===== May ===== | ||
- | |||
- | |< 100% 20% 20% 30% 10% 20% >| | ||
- | ^ Week ^ Topic ^ Material | ||
- | | Week 15:\\ May 2 - May 6 | Multiple models.\\ PLEASE ATTEND MAY 6th LECTURE TO FILL OUT THE ASCSU STUDENT COURSE SURVEYS! Distance-section students will be filling out the survey on-line. | ||
- | |||
- | | Week 16:\\ May 10 | Final Project Notebook Due. | | | Check in final project notebook by Tuesday, May 10th, at 10:00 PM. [[Final Project Report|Here is a summary]] of what is expected in your reportsl | ||
- | |||
- | Selected Project Reports (in no particular order): | ||
- | |||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | * [[http:// | ||
- | |||
- | */ | ||