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COURSE INFORMATION
Course CodeCourse TitleL+P HourSemesterECTS
EEEN 352INTRODUCTION TO MACHINE LEARNING3 + 07th Semester4

COURSE DESCRIPTION
Course Level Bachelor's Degree
Course Type Elective
Course Objective To teach machine learning techniques, To implement these techniques in MatLab environment and to use these techniques in solving real-world problems.
Course Content Classification / Regression / Support Vector Machines / Applications
Prerequisites No the prerequisite of lesson.
Corequisite No the corequisite of lesson.
Mode of Delivery Face to Face

COURSE LEARNING OUTCOMES
1Knows fundamental concepts about machine learning.
2Knows machine learning structures.
3Can solve real world problem by using ML tools.
4Can make modeling and prediction by ML tools.

COURSE'S CONTRIBUTION TO PROGRAM
PO 01PO 02PO 03PO 04PO 05PO 06PO 07PO 08PO 09PO 10PO 11
LO 00125232221111
LO 00224322211111
LO 00324212211122
LO 00424222212122
Sub Total817988855466
Contribution24222211122

ECTS ALLOCATED BASED ON STUDENT WORKLOAD BY THE COURSE DESCRIPTION
ActivitiesQuantityDuration (Hour)Total Work Load (Hour)
Course Duration (14 weeks/theoric+practical)14342
Hours for off-the-classroom study (Pre-study, practice)14342
Mid-terms166
Final examination11414
Total Work Load

ECTS Credit of the Course






104

4
COURSE DETAILS
 Select Year   


 Course TermNoInstructors
Details 2019-2020 Spring2SERDAR İPLİKÇİ
Details 2017-2018 Summer1SERDAR İPLİKÇİ
Details 2017-2018 Spring2SERDAR İPLİKÇİ
Details 2016-2017 Spring2SERDAR İPLİKÇİ
Details 2013-2014 Spring2SERDAR İPLİKÇİ


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Course Details
Course Code Course Title L+P Hour Course Code Language Of Instruction Course Semester
EEEN 352 INTRODUCTION TO MACHINE LEARNING 3 + 0 2 Turkish 2019-2020 Spring
Course Coordinator  E-Mail  Phone Number  Course Location Attendance
Prof. Dr. SERDAR İPLİKÇİ iplikci@pau.edu.tr MUH A0325 %70
Goals To teach machine learning techniques, To implement these techniques in MatLab environment and to use these techniques in solving real-world problems.
Content Classification / Regression / Support Vector Machines / Applications
Topics
WeeksTopics
1 Introduction
2 Constrained Optimization
3 Constrained Optimization
4 Constrained Optimization
5 Classification by Support Vector Machines
6 Classification by Support Vector Machines
7 Classification by Support Vector Machines
8 Classification by Support Vector Machines
9 Regression by Support Vector Machines
10 Regression by Support Vector Machines
11 Regression by Support Vector Machines
12 Regression by Support Vector Machines
13 Applications
14 Applications
Materials
Materials are not specified.
Resources
Course Assessment
Assesment MethodsPercentage (%)Assesment Methods Title
Final Exam50Final Exam
Midterm Exam50Midterm Exam
L+P: Lecture and Practice
PQ: Program Learning Outcomes
LO: Course Learning Outcomes