Course Information

Course Information
Course Title Code Semester L+U Hour Credits ECTS
Data Mining YBS214 4. Semester 3 + 0 3.0 6.0
Prerequisites None
Language of Instruction Turkish
Course Level Undergraduate
Course Type
Mode of delivery FaceToFace
Course Coordinator Lect. Dr. Günay TEMÜR
Instructor(s) Günay TEMÜR
Assistants
Goals Introducing data mining and providing information about its intended use. Gaining analysis skills on data sets. Introducing and using the programs to be used in data mining.
Course Content -Explaining the basic concepts of Data Mining -Introducing the usage areas of Data Mining -Explaining the basic methods of Data Mining -Introducing the software used in Data Mining -Data analysis using various Data Mining methods
Learning Outcomes - Knows the definition and purpose of using data mining
- Knows data mining processes
- Gets information about the softwares used in data mining
- Knows and applies data preprocessing processes
- Knows basic data mining methods, applies them and interprets the results.
Weekly Topics (Content)
Week Topics Learning Methods
1. Week Introduction to Data Mining Research Course Hours Preparation, After Class Study
2. Week Data Mining Basic Concepts, Background, Methods Research Preparation, After Class Study Course Hours
3. Week Basic Python operations Course Hours Research Practice Preparation, After Class Study
4. Week Basic Python Operations Course Hours Preparation, After Class Study Practice Research
5. Week Basic Python Operations Preparation, After Class Study Practice Course Hours Research
6. Week Dataset creation and preprocessing operations Preparation, After Class Study Course Hours Research Practice
7. Week Regression Algorithms Practice Research Course Hours Preparation, After Class Study
8. Week Classification Algorithms Course Hours Research Preparation, After Class Study Practice
9. Week Classification Algorithms
10. Week Classification Algorithms Course Hours Preparation, After Class Study Practice
11. Week Association Rules Course Hours Research Preparation, After Class Study Practice
12. Week Association Rules Course Hours Practice Preparation, After Class Study
13. Week Clustering Algorithms Course Hours Research Preparation, After Class Study Practice
14. Week Overview of The Term Preparation, After Class Study Practice Course Hours
Recommended Sources
Course Slides
İlker Arslan, Data Science with Python, Pusula Press
Sadi Evren Seker- Youtube "Computer Concepts" Channel Data Mining Videos
Web pages related to the subject to be specified within the course
Relations with Education Attainment Program Course Competencies
Program Requirements Contribution Level DK1 DK2 DK3 DK4 DK5 Measurement Method
PY1 0 0 0 0 0 0 -
PY2 5 5 5 0 5 5 40,60
PY3 4 4 4 0 4 4 40,60
PY4 5 5 5 0 5 5 -
PY5 4 4 4 0 4 4 -
PY6 3 3 3 0 3 3 -
PY7 5 5 5 0 5 5 40,60
PY8 5 5 5 0 5 5 40,60
PY9 5 5 5 0 5 5 -
PY10 3 3 3 0 3 3 -
PY11 2 2 2 0 2 2 -
PY12 1 1 1 0 1 1 -
PY13 0 0 0 0 0 0 -
PY14 3 3 3 0 3 3 -
*DK = Course's Contrubution.
0 1 2 3 4 5
Course's Level of contribution None Very Low Low Fair High Very High
Method of assessment/evaluation Written exam Oral Exams Assignment/Project Laboratory work Presentation/Seminar
ECTS credits and course workload
Event Quantity Duration (Hour) Total Workload (Hour)
Course Hours 14 3 42
Research 14 3 42
Preparation, After Class Study 14 3 42
Practice 10 2.5 25
Midterm 1 1 1 1
Final 1 1 1
Total Workload 153
ECTS Credit of the Course 6.0