Comprehensive Data Mining Course Overview - ICS426
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This detailed syllabus for ICS426 outlines the Data Mining course, based on the second edition of "Data Mining: Concepts and Techniques" by Jiawei Han and Micheline Kamber. Key components include attendance (2%), quizzes (12%), homework (6%), a project (12%), two major exams (38%), and a final exam (30%). The course covers essential topics such as data preprocessing, OLAP technology, mining associations, classification, and cluster analysis, with specific durations allocated for each chapter to enhance student understanding.
Comprehensive Data Mining Course Overview - ICS426
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Syllabus ICS426: The course
- The course … • Book: • Title: Data Mining Concepts and Techniques • Authors: Jiawei and Micheline Kamber • Edition: Second • Grade Distribution • Attend.& participation 2% • 4 Quizzes: 12% • 2 Home works: 6% • A project 12% • Major 1: 18% • Major 2: 20% • Final: 30% ICS426: The course
… - The course … • Ch 1: Introduction ( 0.5 week) • Ch 2: Data Preprocessing (2.5 weeks) • Ch 3: DW and OLAP Technology: An Introduction (2 weeks) • Ch 4: Advanced Data Cube Technology and Data Generalization (2.5) • Ch 5: Mining Frequent Patterns, Association and Correlations (2 weeks) • Ch 6: Classification and Prediction (3 weeks) • Ch 7: Cluster Analysis (2.5 weeks) ICS426: The course
… - The course (4) DS OLAP (2) (3) DP DW DS DM (5) Association DS (6) Classification (7) Clustering DS = Data source DW = Data warehouse DM = Data Mining DP = Data processing ICS426: The course
END ICS426: The course