184.702 Machine Learning
This course is in all assigned curricula part of the STEOP.
This course is in at least 1 assigned curriculum part of the STEOP.

2016W, VU, 3.0h, 4.5EC
TUWEL

Properties

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

Aim of course

Principles of Supervised Machine Learning, including algorithms, meta-algorithms, evaluation, ...

Subject of course

Principles of Supervised and Unsupervised Machine Learning, including pre-processing and Data Preparation, as well as Evaluation of Learning Systems. Machine Learning models discussed may include e.g. Decision Tree Learning, Model Selection, Bayesian Networks, Support Vector Machines, Random Forests, Hidden Markov Models, as well as ensemble methods.

Didactical Concept:
-Lectures
-Exercises:
students will compare different machine algorithms for particular data sets, and have to implement a machine learning algorithm - Presentation of algorithms by students - Discussion of reports that summarize the comparison of machine learning algorithms

Assessment: is based on written exam, report, and implemented machine learning algorithms

Additional information

Lecture start: 13:00 c.t. First lecture is a preliminary discussion.

This course will be held completely in TUWEL - all lecture materials and news about the lecture will be made available there, and all questions regarding the course should be asked in the TUWEL forum *only*, not via TISS.

To get access to the TUWEL course, just apply to the group in TISS, and then follow the TUWEL link above

 

ECTS Breakdown:

8 classes (including prepration): 22 h

4 classes for presentations/discussions (including preparation): 12

Assignments: 46.5 h

exam: 32 h

---------------

total: 112.5 h

 

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Thu13:00 - 14:0006.10.2016EI 8 Pötzl HS - QUER Preliminary discussion
Thu13:00 - 15:0013.10.2016 - 02.02.2017FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Fri09:00 - 11:0021.10.2016 - 20.01.2017EI 8 Pötzl HS - QUER Vorlesung
Thu13:00 - 15:0017.11.2016Seminarraum 212-232 - mündl. Prüfung BI VU Machine Learning - Ausweichtermin
Wed09:00 - 14:0007.12.2016Seminarraum FAV EG B (Seminarraum von Neumann) Presentations Exercise 1
Fri10:00 - 15:0009.12.2016Seminarraum FAV EG C (Seminarraum Gödel) Presentations Exercise 1
Mon11:00 - 13:0009.01.2017Seminarraum FAV 01 C (Seminarraum 188/2) Präsenationen
Mon16:00 - 18:3009.01.2017Seminarraum FAV EG C (Seminarraum Gödel) Presentations Exercise 2
Tue10:00 - 12:3010.01.2017Seminarraum FAV 01 C (Seminarraum 188/2) Präsentationen
Tue14:30 - 16:3010.01.2017FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Presentations Exercise 2
Thu13:00 - 15:0019.01.2017FH Hörsaal 4 ML Präsentationen - Ersatzhörsaal
Wed14:00 - 18:0025.01.2017Seminarraum FAV 01 B (Seminarraum 187/2) Presenations ML-Ex
Thu11:00 - 12:0026.01.2017FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Presenations ML-Ex
Thu12:00 - 17:0026.01.2017FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Presentations Lab 3
Wed14:00 - 17:0001.02.2017Seminarraum FAV EG B (Seminarraum von Neumann) Presentations Exercise 3
Thu12:00 - 17:0002.02.2017FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Machine Learning/Presentations Exercise 3
Machine Learning - Single appointments
DayDateTimeLocationDescription
Thu06.10.201613:00 - 14:00EI 8 Pötzl HS - QUER Preliminary discussion
Thu13.10.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Thu20.10.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Fri21.10.201609:00 - 11:00EI 8 Pötzl HS - QUER Vorlesung
Thu27.10.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Fri28.10.201609:00 - 11:00EI 8 Pötzl HS - QUER Vorlesung
Thu03.11.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Fri04.11.201609:00 - 11:00EI 8 Pötzl HS - QUER Vorlesung
Thu10.11.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Fri11.11.201609:00 - 11:00EI 8 Pötzl HS - QUER Vorlesung
Thu17.11.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Thu17.11.201613:00 - 15:00Seminarraum 212-232 - mündl. Prüfung BI VU Machine Learning - Ausweichtermin
Fri18.11.201609:00 - 11:00EI 8 Pötzl HS - QUER Vorlesung
Thu24.11.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Fri25.11.201609:00 - 11:00EI 8 Pötzl HS - QUER Vorlesung
Thu01.12.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Fri02.12.201609:00 - 11:00EI 8 Pötzl HS - QUER Vorlesung
Wed07.12.201609:00 - 14:00Seminarraum FAV EG B (Seminarraum von Neumann) Presentations Exercise 1
Thu08.12.201613:00 - 15:00FAV Hörsaal 3 Zemanek (Seminarraum Zemanek) Lecture
Fri09.12.201609:00 - 11:00EI 8 Pötzl HS - QUER Vorlesung

Examination modalities

written exam

Exams

DayTimeDateRoomMode of examinationApplication timeApplication modeExam
Tue15:00 - 17:0030.04.2024Informatikhörsaal - ARCH-INF assessed29.03.2024 23:00 - 25.04.2024 23:59TISSExam (WS2023 2nd & final re-take)
Wed15:00 - 17:0026.06.2024GM 1 Audi. Max.- ARCH-INF written27.05.2024 00:00 - 23.06.2024 23:59TISSExam (2024 main date)

Course registration

Begin End Deregistration end
09.02.2016 00:00 14.10.2016 12:00 16.10.2016 23:00

Group Registration

GroupRegistration FromTo
A31.08.2016 12:0014.10.2016 23:59

Curricula

Literature

No lecture notes are available.

Previous knowledge

Two chapters of Data Mining/Business Intelligence (188.429) courses will be posted in TUWEL. If you did not attend this course before, please read this material before the first class of Machine Learning course.

Self-Organising Systems (188.413) offers complementary topics in unsupervised data analysis. Information Retrieval (188.412) applies principles from Data Mining, Machine Learni

Accompanying courses

Continuative courses

Miscellaneous

Language

English