|
CSE Home | About Us | Search | Contact Info |
Instructor:
Pedro Domingos Office: Sieg 216 Office hours: Wednesdays 5:30-6:20, and by appointment |
TA: Parag Office: Sieg 226a Office hours: Wednesdays 5:30-6:20, and by appointment |
Class meets:
Wednesdays 6:30-9:20 in EE1 037
Week | Topics & Lecture Notes |
---|---|
Week 1 (Apr 2) | Introduction; data warehousing and OLAP PPT , PDF |
Week 2 (Apr 9) | Inductive learning, decision trees PPT , PDF |
Week 3 (Apr 16) | Rule induction PPT, PDF |
Week 4 (Apr 23) | Bayesian learning PPT, PDF |
Week 5 (Apr 30) | Neural networks PPT, PDF |
Week 6 (May 7) | Genetic algorithms, model ensembles PPT, PDF |
Week 7 (May 14) | Instance-based learning PPT, PDF |
Week 8 (May 21) | Learning theory PPT, PDF |
Week 9 (May 28) | Association rules PPT, PDF |
Week 10 (June 4) | Clustering PPT, PDF |
Schedule | Assignment | % of Grade | Topic | Additional Info |
---|---|---|---|---|
Weeks 2-3 | Homework 1 | 12.5 | Data warehousing and OLAP, decision trees | |
Weeks 3-6 | Project 1 | 37.5 | Clickstream mining | |
Weeks 6-7 | Homework 2 | 12.5 | Rule ind., Bayesian learning, neural nets, GAs, ensembles | |
Weeks 7-9 | Project 2 | 25 | Text classification | |
Weeks 9-10 | Homework 3 | 12.5 | IBL, theory, association rules |
|
|
Department of Computer Science & Engineering University of Washington Box 352350 Seattle, WA 98195-2350 (206) 543-1695 voice, (206) 543-2969 FAX [comments to parag@cs.washington.edu] |