Course contents
The basics of the probabilistic method.
Probabilistic modelling.
Dimensionality reduction.
Graphical models.
Hidden Markov models.
Expectation-Maximization.
Variational Inference.
Networks in variational inference.
Course memo Autumn 2021-50172
Version 1 – 10/04/2022, 4:39:14 PM
mladv21 (Start date 01/11/2021, English)
English
EECS/Intelligent Systems
Headings denoted with an asterisk ( * ) is retrieved from the course syllabus version Autumn 2021
The basics of the probabilistic method.
Probabilistic modelling.
Dimensionality reduction.
Graphical models.
Hidden Markov models.
Expectation-Maximization.
Variational Inference.
Networks in variational inference.
After passing the course, the student should be able to
in order to be able to do a degree project in deterministic inference methods.
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Students at KTH with a permanent disability can get support during studies from Funka:
A, B, C, D, E, FX, F
Based on recommendation from KTH’s coordinator for disabilities, the examiner will decide how to adapt an examination for students with documented disability.
The examiner may apply another examination format when re-examining individual students.
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1 Nov 2021
English