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UNIVERSITI MALAYA
UNIT PENGURUSAN PENJAMINAN KUALITI
[email protected]
COURSE PRO FORMA
IMPORTANT: Contents of this Pro Forma should not be changed without Senate approval.
Faculty :
Faculty of Computer Science and Information Technology
Department :
Information Science
Program of Study :
Master of Computer Science
Course Code :
WMGA6317
Course Title :
DATA WAREHOUSING AND ATA MINING
Credit Hours :
3
Course Pre-requisite(s) /
Minimum Requirement(s) :
-
Course Objective(s) :
At the end of the course, students will be able to:
Introduce students to various data mining concepts and algorithms. The
emphasis is on the use of data mining concepts in real-world
applications with large database components.
Synopsis of Course Contents :
1. It provides an introduction to the multidisciplinary field of data
mining.
2. It provides an introduction to data warehouses and OLAP.
3. It describes techniques for preprocessing the data prior to mining.
4. It introduces the primitives of data mining that define the
specification of a data mining task.
5. It describes techniques for concept description, including
characterization and discrimination.
6. It presents methods for mining association rules in transaction
databases as well as relational databases and data warehouse.
7. It looks at various concepts that complicate data mining
applications. It concentrates on temporal data, spatial data, and
Web mining.
Assessment :
Continuous Assessment : 60%
Final Examination : 40%
UM-PT01-PK03-BR003(BI)-S00