Detailed information |
Original study plan |
Bachelor's programme Artificial Intelligence 2019W |
Objectives |
This practical course complements the lecture "Machine Learning: Unsupervised Techniques" and aims at practicing the concepts and methods acquired in the lecture.
|
Subject |
- Error models
- Information bottleneck
- Maximum likelihood and the expectation maximization algorithm
- Maximum entropy methods
- Basic clustering methods, hierarchical clustering, and affinity propagation
- Mixture models
- Principal component analysis, independent component analysis, and other
projection methods
- Factor analysis
- Matrix factorization
- Auto-associator networks and attractor networks
- Boltzmann and Helmholtz machines
- Hidden Markov models
- Belief networks
- Factor graphs
|
Criteria for evaluation |
Marking is based on homework
|
Methods |
Students are given assignments in 1-2 week intervals. Homework must be handed in. Results are to be presented and discussed in the course.
|
Language |
English |
Study material |
Assignments and homework submissions are managed via JKU Moodle.
Where necessary, complimentary course material is provided for download.
|
Changing subject? |
No |
Corresponding lecture |
875BIMLMUTU16: UE Machine Learning: Unsupervised Techniques (1,5 ECTS)
|
Earlier variants |
They also cover the requirements of the curriculum (from - to) 875BIMLMUTU16: UE Machine Learning: Unsupervised Techniques (2016W-2019S) 875BIN2MUTU13: UE Machine Learning: Unsupervised Techniques (2013W-2016S)
|