Evolutionary Computation & Optimisation - 2019 entry
MODULE TITLE | Evolutionary Computation & Optimisation | CREDIT VALUE | 15 |
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MODULE CODE | ECMM423 | MODULE CONVENER | Dr Alberto Moraglio (Coordinator) |
DURATION: TERM | 1 | 2 | 3 |
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DURATION: WEEKS | 0 | 11 | 0 |
Number of Students Taking Module (anticipated) | 30 |
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Evolutionary computation is the study of computational systems that use ideas and derive their inspiration from natural evolution. Its techniques can be applied to optimisation, learning and design. The main focus of this module is on optimisation problems. Example topics covered in this module include natural and artificial evolution, chromosome representations and search operators for continuous and combinatorial optimisation, co-evolution, techniques for constrained optimisation, multi-objective optimisation, dynamic optimisation, evolution of neural networks, genetic programming and theoretical foundations. This module is appropriate for any student with an interest in bio-inspired problem-solving techniques and optimisation who has some programming and mathematical experience.
Prerequisite module: ECM3412 or ECMM409 or equivalent
The aims of this module are to:
introduce the main concepts and techniques in the field of evolutionary computation and their application to optimisation problems;
provide students with practical experience on the development and implementation of evolutionary techniques, and their appropriate usage.
On successful completion of this module you should be able to:
Module Specific Skills and Knowledge
2. Design new evolutionary operators, representations and fitness functions for specific applications (e.g., combinatorial/real, multi-objective, constrained);
Discipline Specific Skills and Knowledge
5. Demonstrate familiarity with the main trends in evolutionary computation research;
Personal and Key Transferable / Employment Skills and Knowledge
8. Relate theoretical knowledge to practical concerns;
Indicative list of topics:
- Summary of traditional optimisation techniques
- History of evolutionary computation and biological background
- Basic structure of an evolutionary algorithm
- Genetic representation, search operators, selection schemes and selection pressure
- Optimisation problems, fitness landscapes and multi-modality
- Multi-population methods, co-evolution
- Niching and speciation
- Multi-objective evolutionary optimisation
- Dynamic optimisation
- Robust and noisy optimisation
- Genetic programming
- Evolving learning-machines, e.g. neural networks
- Theoretical analysis of evolutionary algorithms
- Experimental design
Scheduled Learning & Teaching Activities | 34 | Guided Independent Study | 116 | Placement / Study Abroad | 0 |
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Category | Hours of study time | Description |
Scheduled learning and teaching activities | 24 | Lectures |
Scheduled learning and teaching activities | 10 | Workshop/tutorials |
Guided independent study | 50 | Project and Coursework |
Guided independent study | 66 | Wider reading |
Form of Assessment | Size of Assessment (e.g. duration/length) | ILOs Assessed | Feedback Method |
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Coursework | 80 | Written Exams | 0 | Practical Exams | 20 |
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Form of Assessment | % of Credit | Size of Assessment (e.g. duration/length) | ILOs Assessed | Feedback Method |
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Coursework – evolutionary computation project & technical report | 80 | 50 hours | 1,2,3,4,5,6,7,8,9 | Comments directly on project report and on individual feedback sheet |
Coursework - Presentation & demonstration | 20 | 10 hours preparation | 1, 5, 10 | Written, verbal |
Original Form of Assessment | Form of Re-assessment | ILOs Re-assessed | Time Scale for Re-assessment |
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All above | Coursework (100%) | All | Ref/def Exam Period |
Since this is assessed entirely by coursework, all referred assessments will be by the assignment of a new piece of coursework. Deferred assignments will be done by the original piece of coursework combining elements of the module.
information that you are expected to consult. Further guidance will be provided by the Module Convener
Basic reading:
ELE: http://vle.exeter.ac.uk/
Web based and Electronic Resources:
Other Resources:
Articles in journals and conference proceedings
Reading list for this module:
Type | Author | Title | Edition | Publisher | Year | ISBN |
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Set | Goldberg, D | Genetic Algorithms in Search, Optimization and Machine Learning | Addison Wesley | 1989 | ||
Set | Banzhaf W, Nordin P, Keller R E and Francone F D | Genetic Programming: an introduction | Morgan Kaufmann | 1998 | 978-1558605107 | |
Set | T. Baeck, D. B. Fogel, and Z. Michalewicz | Handbook on Evolutionary Computation | 1997 | |||
Set | Z Michalewicz | Genetic Algorithms + Data Structures = Evolution Programs | 3rd | Springer | 1996 | |
Set | Kalyanmoy Deb | -Objective Optimization Using Evolutionary Algorithms | 2001 | |||
Set | James C. Spall | Introduction to Stochastic Search and Optimization | 2003 |
CREDIT VALUE | 15 | ECTS VALUE | 7.5 |
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PRE-REQUISITE MODULES | ECM3412, ECMM409 |
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CO-REQUISITE MODULES |
NQF LEVEL (FHEQ) | 7 | AVAILABLE AS DISTANCE LEARNING | No |
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ORIGIN DATE | Tuesday 10th July 2018 | LAST REVISION DATE | Tuesday 10th July 2018 |
KEY WORDS SEARCH | Evolutionary Computation; Optimisation |
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Please note that all modules are subject to change, please get in touch if you have any questions about this module.