Instructor: Md. Firoz Hasan Office : Room # 735, Level 7,Academic Building -4 Cellphone #: 01705726026 Email: firoz.cse@diu.edu.bd
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Course
Rationale
An introduction to
data mining; Data preparation, model building, and data mining techniques such
as clustering, decisions trees and neural networks; Induction of predictive
models from data: classification, regression, and probability estimation;
Application case studies; Data-mining software tools review and comparison.
Course Objectives
- To
appreciate the necessity of data mining in everyday life
- To
apply the concept of data mining in solving problems
- To
demonstrate applications of data mining using tools
- To
apply knowledge of data mining in project work
Course Outcomes (CO’s)
- CO1 Able to grasp the basic Data Mining Principles
- CO2 Able to identify appropriate data mining algorithms to solve real world problems
- CO3 Able to compare and evaluate different data mining techniques like classification, prediction, clustering and association rule mining
- CO4 Able to apply data mining knowledge in problem solving
Grading Scheme
Attendance: 7% Class Tests/Quizzes: 15%
Assignment: 5% Presentation (using video/ppt): 8%
Midterm Exam: 25% Final Exam: 40%
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- Introduction to Data Mining by Tan
- Machine
Learning by Tom Mitchell
- Reference Reading Materials
- Introduction to Data Mining and Applications
- Data Mining Concepts and Techniques
- Data Mining Techniques
- IEEE Template
- ACM Template