MAI 4194 Data Mining
Senin, 15 September 2008
Mathematics Study Program – Mathematics Department – Faculty of Science – University of Brawijaya
3 sks. Odd Semester 2008/2009 – Requirement: Data Base

Schedule :
Tuesday, 13:00 – 14:45 - BM 2.1 & Thursday, 14:50 – 15:50 - MP 2.4

Aims of course :
Students can understand and use data mining techniques for mining information in large database .

Course Outline:

  • Introduction to Data Mining
  • Data Pre processing
  • Dimension Reduction Method: Entropy Measure For Ranking Features, PCA
  • Data Pre processing
  • Clustering: K-means, Fuzzy clustering, Hierarchical Clustering, Self Organizing Feature Maps
  • Association-Rule Mining
  • Classification: Decision Tree, Bayesian, Discriminant Analysis
  • Information Extraction Using Neural Networks
  • Prediction: Support Vector Machines
  • Case Study

Text Book :

  • Larose , D. T., 2006. Data Mining Methods And Models. John Wiley & Sons, Inc.
  • Han, J. and Micheline K., 2006.Data Mining: Concepts and Techniques Second Edition, Elsevier Inc.
  • Berry, M. J.A. and Gordon S. Linoff, 2004, Data Mining Techniques For Marketing, Sales, and Customer Relationship Management, Wiley Publishing, Inc.
  • Larose , D. T., 2005, DISCOVERING KNOWLEDGE IN DATA : An Introduction to Data Mining, John Wiley & Sons, Inc.

Evaluation:

  1. Quiz : 30%
  2. Assignment : 20%
  3. Middle Test : 25%
  4. Final Test ( Case Study / Presentation) : 25%

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