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Cluster Analysis

Course Objectives
The aim is to understand the mathematical principles of clustering algorithms and to use them in applications.
Course materials
  1. Clustering, R. Xu, D. Wunsch, John Wiley & Sons, 2008.
  2. Data Mining: Concepts and Techniques, J. Han, M. Kamber, J. Pei, Elsevier 2006.
Assessment
40% Midterm exam + 60% Final exam
Prerequisites
there is no formal prerequisite.
 
Week Subjects  
1. Introduction to data clustering Lesson 1
2. Partitioning clustering algorithms Lesson 2
3. Hierarchical clustering algorithms Lesson 3
4. Density based clustering algorithms Lesson 4
5. Grid based clustering algorithms Lesson 5
6. Cluster Validation Lesson 6
7. Review for midterm exam  
8. Midterm exam  
9. Supervised clustering and classification  
10. Clustering in time series and discretization  
11. Image segmentation by clustering  
12. Graph clustering  
13. Students Presentations 1  
14. Students Presentations 2  
15. Review for final exam  
  Final Exam  

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