188.413 Self-Organizing Systems
This course is in all assigned curricula part of the STEOP.
This course is in at least 1 assigned curriculum part of the STEOP.

2022W, VU, 3.0h, 4.5EC
TUWEL

Properties

  • Semester hours: 3.0
  • Credits: 4.5
  • Type: VU Lecture and Exercise
  • Format: Hybrid

Learning outcomes

After successful completion of the course, students are able to 

  • train self-organizing maps
  • select and combine suitable visualization techniques
  • detect patterns in data based on visualizations and generate hypotheses  concerning the cluster structure
  • interpret cluster structures and critically reflect on these
  • recognize application scenarios for genetic algorithms, cellular automata and ant colony systems
  • able to deploy these methods, and understand their parameter optimisation for specific tasks
  • describe the functionality of different swarm intelligence systems and assign them to different problem domains based on their strength and weakness 
  • implement a particle swarm optimization algorithm for a given problem and tune its parameter accordingly
  • understand and reason the basic methodic of swarm robotics as well as its applications 

Subject of course

Unsupervised Learning models, such as self-organizing maps, growing hierarchical structures, cellular automata, ant colony optimisation, ... 

Lecture Dates:

  • 06.10: Introduction (Vorbesprechung) & first lecture
  • (further detailed schedule see TUWEL)
    • TBA: Genetic Algorithms, Cellular Automata, Swarms
    • TBA: Multi-Agent Systems
    • TBA: Swarm Systems 1
    • TBA: Swarm Systems 2
    • TBA: SOM 1: Basics, Architecture, Training Process
    • TBA: SOM 2: Visualizations: class distributions, densities, cluster boundaries, topology violations
    • TBA: SOM 3: Visualizations (cont.), Quality Measures,  SOM Comparisons, related Architectures

ECTS/Effort:

Lectures: 8 sessions a 2h: 16h

Literature: 10h

Exercises:

    Ex1: 20h

    Ex2: 20h

    Ex3: 20h

Exam Preparation: 25.5h

Exam: 1h

SUM: 112.5h

Teaching methods

- Lectures (on-line, live-streaming)

- Demos and examples discussed during class

- Assignments to be elaborated in small groups

Mode of examination

Written and oral

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Thu09:00 - 11:0006.10.2022 - 26.01.2023FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu10:00 - 12:0006.10.2022FH Hörsaal 3 - MATH Lecture
Self-Organizing Systems - Single appointments
DayDateTimeLocationDescription
Thu06.10.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu06.10.202210:00 - 12:00FH Hörsaal 3 - MATH Lecture
Thu13.10.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu20.10.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu27.10.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu03.11.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu10.11.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu17.11.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu24.11.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu01.12.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu15.12.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu22.12.202209:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu12.01.202309:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu19.01.202309:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture
Thu26.01.202309:00 - 11:00FAV Hörsaal 1 Helmut Veith - INF Lecture

Examination modalities

  • written assignments and oral reviews of these assigments.
  • written assigment/exam (closed book) - according to current planning in presence. If the pandemic situation will not allow exams in presence at the scheduled time, we will switch to an on-line assessment via TUWEL. In case of low enrollment, this assigment can also be conducted orally (also depending on the development of the pademic situation.

Course registration

Begin End Deregistration end
01.09.2022 00:00 24.10.2022 23:59 23.11.2022 23:59

Curricula

Study CodeObligationSemesterPrecon.Info
066 645 Data Science Not specified
066 926 Business Informatics Not specified
066 926 Business Informatics Not specified
066 931 Logic and Computation Mandatory elective
066 932 Visual Computing Mandatory elective
066 933 Information & Knowledge Management Mandatory elective
066 935 Media and Human-Centered Computing Mandatory elective
066 937 Software Engineering & Internet Computing Mandatory elective

Literature

No lecture notes are available.

Accompanying courses

Continuative courses

Language

if required in English