Data Mining
THE INSTRUCTOR
TEXTBOOK
- Pang-Ning Tan, Michael Steinbach, and Vipin Kumar, Introduction to Data
Mining, Pearson International Edition, 2005.
- Book information online Kumar, Thomo
REFERENCES
- 
Data Mining:  Concepts and Techniques, J. Han and M. Kamber, Morgan
Kaufmann , 2000
- Slides can be downloaded from http://www.cs.sfu.ca/~han/DM_Book.html
- David Hand, Heikki Mannila, Padhraic Smith, Principles of Data Mining, MIT
Press, 2001. 
- Mehmed M. Kantard, Data Mining: Concepts, Models, Methods and Algorithms,
Wiley-IEEE Press, 2002. 
- Ethem Alpaydin, Introduction to Machine Learning, MIT Press, 2004. 
SCHEDULE
- Week 2 to 8: Instructor Teaching
- Week 9 to 10: KDD Cup
- Week 11: Mid-term Exam
- Week 12 to 14: Paper reading
- Week 15 to 17: Project presentation
GRADING
Name
List 
- KDD Cup (20%)
- Mid-term (30%)
- Paper presentation (20%)
- Final project (30%)
COURSE CONTENT
- 
Data Mining Techniques
- Data Warehouse and OLAP
- Data Description and Comparison
- 
Associations -- finding association rules, dependency/belief networks,
market basket analysis
- 
Classification -- building a classification model  (Decision tree
| Rules | Neural network | Bayesian | Other )
- 
Clustering - for finding clusters or segments
- 
Data Mining Software -- Libraries and Developer Kits for creating embedded
data mining applications
- 
DBMiner
- 
IBM Intelligent Miner for Data
USEFUL LINKS