Syllabus ( CSE 624 )
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Basic information
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| Course title: |
Heuristic Optimization |
| Course code: |
CSE 624 |
| Lecturer: |
Prof. Dr. Fatih Erdoğan SEVİLGEN
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| ECTS credits: |
7.5 |
| GTU credits: |
3 (3+0+0) |
| Year, Semester: |
1/2, Fall and Spring |
| Level of course: |
Second Cycle (Master's) |
| Type of course: |
Area Elective
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| Language of instruction: |
Turkish
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| Mode of delivery: |
Face to face , Group study
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| Pre- and co-requisites: |
None |
| Professional practice: |
No |
| Purpose of the course: |
Teaching and application of heuristic methods to NP-complete or NP-hard problems whıch do not have efficient solutions. |
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Learning outcomes
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Upon successful completion of this course, students will be able to:
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Apply metaheuristic methods to obtain efficient solutions for NP-complete or NP-hard problems
Contribution to Program Outcomes
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Define and manipulate advanced concepts of Computer Engineering
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Formulate and solve advanced engineering problems
Method of assessment
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Term paper
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List and define metaheuristic techniques
Contribution to Program Outcomes
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Define and manipulate advanced concepts of Computer Engineering
Method of assessment
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Written exam
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Choose a suitable metaheurisitc technique for a given problem
Contribution to Program Outcomes
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Define and manipulate advanced concepts of Computer Engineering
Method of assessment
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Written exam
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Homework assignment
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Contents
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| Week 1: |
What is Optimization? |
| Week 2: |
Greedy Solution Generation Methods |
| Week 3: |
Methods for Improving Solutions |
| Week 4: |
Branch and Bound |
| Week 5: |
Backtracking |
| Week 6: |
Genetic Algorithms |
| Week 7: |
Genetic Algorithms |
| Week 8: |
Simulated Annealing Midterm exam |
| Week 9: |
Particle Swarm Optimization |
| Week 10: |
Particle Swarm Optimization |
| Week 11: |
Tabu Search |
| Week 12: |
Tabu Search |
| Week 13: |
Variable Neighborhood Search |
| Week 14: |
Iterated Local Search |
| Week 15*: |
Iterated Local Search |
| Week 16*: |
Final exam |
| Textbooks and materials: |
Fred Glover, Gary Kochenberger, Handbook of Metaheuristics. |
| Recommended readings: |
Zbigniev Michalewicz, David Fogel, How to Solve It: Modern Heuristics. |
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* Between 15th and 16th weeks is there a free week for students to prepare for final exam.
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Assessment
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| Method of assessment |
Week number |
Weight (%) |
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| Mid-terms: |
8 |
30 |
| Other in-term studies: |
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0 |
| Project: |
7,14 |
30 |
| Homework: |
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0 |
| Quiz: |
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0 |
| Final exam: |
16 |
40 |
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Total weight: |
(%) |
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Workload
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| Activity |
Duration (Hours per week) |
Total number of weeks |
Total hours in term |
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| Courses (Face-to-face teaching): |
3 |
14 |
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| Own studies outside class: |
4 |
14 |
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| Practice, Recitation: |
0 |
0 |
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| Homework: |
0 |
0 |
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| Term project: |
10 |
4 |
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| Term project presentation: |
3 |
2 |
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| Quiz: |
0 |
0 |
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| Own study for mid-term exam: |
12 |
1 |
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| Mid-term: |
3 |
1 |
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| Personal studies for final exam: |
20 |
1 |
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| Final exam: |
3 |
1 |
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Total workload: |
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Total ECTS credits: |
* |
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* ECTS credit is calculated by dividing total workload by 25. (1 ECTS = 25 work hours)
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