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Course Details
KTO KARATAY UNIVERSITY
Mühendislik ve Doğa Bilimleri Fakültesi
Programme of Computer Engineering
Course Details
Course Code Course Name Year Period Semester T+A+L Credit ECTS
05071370 Introduction to Data Mınıng 4 Autumn 7 3+0+0 3 5
Course Type Elective
Course Cycle Bachelor's (First Cycle) (TQF-HE: Level 6 / QF-EHEA: Level 1 / EQF-LLL: Level 6)
Course Language Turkish
Methods and Techniques -
Mode of Delivery Face to Face
Prerequisites -
Coordinator -
Instructor(s) Asst. Prof. Ali Osman ÇIBIKDİKEN
Instructor Assistant(s) -
Course Instructor(s)
Name and Surname Room E-Mail Address Internal Meeting Hours
Asst. Prof. Ali Osman ÇIBIKDİKEN A-124 [email protected] 7585 Monday
14.00-15.00
Course Content
Data warehouse architectures and design issues, basic data mining strategies of supervised learning, unsupervised clustering and association rules. K-nearest neighbor, K-means, decision trees and production rules, neural networks, genetic learning, regression, statistical evaluation techniques.
Objectives of the Course
Basic data mining concepts, applications and techniques will be shown to students. Also the students will be prepared for doing research alone.
Contribution of the Course to Field Teaching
Basic Vocational Courses
Specialization / Field Courses
Support Courses X
Transferable Skills Courses
Humanities, Communication and Management Skills Courses
Relationships between Course Learning Outcomes and Program Outcomes
Relationship Levels
Lowest Low Medium High Highest
1 2 3 4 5
# Program Learning Outcomes Level
P1 Adequate knowledge in mathematics, science and related engineering discipline accumulation; theoretical and practical knowledge in these areas, complex engineering the ability to use in problems. 5
P2 Ability to identify, formulate, and solve complex engineering problems; ability to select and apply appropriate analysis and modeling methods for this purpose 5
Course Learning Outcomes
Upon the successful completion of this course, students will be able to:
No Learning Outcomes Outcome Relationship Measurement Method **
O1 Neural networks, genetic learning, regression P.1.16 1
O2 Statistical evaluation techniques P.2.24 1,7
** Written Exam: 1, Oral Exam: 2, Homework: 3, Lab./Exam: 4, Seminar/Presentation: 5, Term Paper: 6, Application: 7
Weekly Detailed Course Contents
Week Topics
1 Introduction to Data Mining
2 Data Mining Concepts
3 Data Preparation Techniques
4 Data Reduction
5 Statistical Methods in Classification (Naive Bayes)
6 Decision Trees and Rules
7 Clustering and Similarity Measure
8 Midterm
9 Clustering Methods (Hierarchical Clustering)
10 Evaluation of Classification Methods
11 Association Rules
12 Using Artificial Neural Networks in Classification
13 Topic Review and Applications
14 Final
Textbook or Material
Resources Data Mining , J. Han – M. Kamber, Morgan-Kaufman, Academic Press, 2001, ISBN: 1-55860-901-6
Evaluation Method and Passing Criteria
In-Term Studies Quantity Percentage
Attendance - -
Laboratory - -
Practice - -
Course Specific Internship (If Any) - -
Homework - -
Presentation - -
Projects - -
Quiz - -
Midterms 1 40 (%)
Final Exam 1 60 (%)
Total 100 (%)
ECTS / Working Load Table
Quantity Duration Total Work Load
Course Week Number and Time 14 3 42
Out-of-Class Study Time (Pre-study, Library, Reinforcement) 14 4 56
Midterms 1 3 3
Quiz 0 0 0
Homework 0 0 0
Practice 0 0 0
Laboratory 0 0 0
Project 0 0 0
Workshop 0 0 0
Presentation/Seminar Preparation 0 0 0
Fieldwork 0 0 0
Final Exam 1 3 3
Other 0 0 0
Total Work Load: 104
Total Work Load / 30 3,47
Course ECTS Credits: 3
Course - Learning Outcomes Matrix
Relationship Levels
Lowest Low Medium High Highest
1 2 3 4 5
# Learning Outcomes P1 P2
O1 Neural networks, genetic learning, regression 3 -
O2 Statistical evaluation techniques - 5