Course detail
Applied Evolutionary Algorithms
FIT-EVOAcad. year: 2019/2020
Overview of principles of stochastic search techniques: Monte Carlo (MC) methods, evolutionary algorithms (EAs). Detailed explanation of selected MC algorithms: Metropolis algorithm, simulated annealing, their application for optimization and simulation. Overview of basic principles of EAs: evolutionary programming (EP), evolution strategies (ES), genetic algorithms (GA), genetic programming (GP). Advanced EAs and their applications: numerical optimization, differential evolution (DE), social algoritmhs: ant colony optimization (ACO) and particle swarm optimization (PSO). Multiobjective optimization algorithms. Applications in solving engineering problems and artificial intelligence.
Language of instruction
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Learning outcomes of the course unit
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Co-requisites
Planned learning activities and teaching methods
Assesment methods and criteria linked to learning outcomes
Exam prerequisites:
None.
Course curriculum
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Aims
Specification of controlled education, way of implementation and compensation for absences
Recommended optional programme components
Prerequisites and corequisites
Basic literature
Recommended reading
Eiben, A.E., Smith, J.E.: Introduction to Evolutionary Computing, 2nd ed. Springer-Verlag Berlin Heidelberg, 2015, ISBN 978-3-662-44873-1
Kvasnička, V., Pospíchal, J., Tiňo, P.: Evolučné algoritmy. STU Bratislava, Bratislava, 2000, ISBN 80-227-1377-5
Luke, S.: Essentials of Metaheuristics. Lulu, 2015, ISBN 978-1-300-54962-8
Talbi, E.-G.: Metaheuristics: From Design to Implementation. Wiley, Hoboken, New Jersey, 2009, ISBN 978-0-470-27858-1
Classification of course in study plans
- Programme IT-MSC-2 Master's
branch MMI , 0 year of study, summer semester, elective
branch MBI , 0 year of study, summer semester, compulsory-optional
branch MSK , 0 year of study, summer semester, elective
branch MMM , 0 year of study, summer semester, elective
branch MBS , 0 year of study, summer semester, elective
branch MPV , 0 year of study, summer semester, compulsory-optional
branch MIS , 0 year of study, summer semester, elective
branch MIN , 0 year of study, summer semester, elective
branch MGM , 0 year of study, summer semester, elective - Programme MITAI Master's
specialization NBIO , 0 year of study, summer semester, elective
specialization NSEN , 0 year of study, summer semester, elective
specialization NVIZ , 0 year of study, summer semester, elective
specialization NGRI , 0 year of study, summer semester, elective
specialization NISD , 0 year of study, summer semester, elective
specialization NSEC , 0 year of study, summer semester, elective
specialization NCPS , 0 year of study, summer semester, elective
specialization NHPC , 0 year of study, summer semester, elective
specialization NNET , 0 year of study, summer semester, elective
specialization NMAL , 0 year of study, summer semester, elective
specialization NVER , 0 year of study, summer semester, elective
specialization NIDE , 0 year of study, summer semester, elective
specialization NEMB , 0 year of study, summer semester, elective
specialization NSPE , 0 year of study, summer semester, elective
specialization NADE , 0 year of study, summer semester, elective
specialization NMAT , 0 year of study, summer semester, elective
specialization NISY , 0 year of study, summer semester, elective
Type of course unit
Lecture
Teacher / Lecturer
Syllabus
- Principles of stochastic search algorithms.
- Monte Carlo methods.
- Evolutionary programming and evolution strategies.
- Genetic algorithms.
- Genetic programming.
- Models of computational development.
- Statistical evaluation of experiments.
- Ant colony optimization.
- Particle swarm optimization.
- Differential evolution.
- Applications of evolutionary algorithms.
- Fundamentals of multiobjective optimization.
- Advanced algorithms for multiobjective optimization.
Exercise in computer lab
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Syllabus