Course Instructor: Traian Rebedea, Costin Gabriel Chiru
Syllabus:
- Introductive elements of machine learning, statistics, information theory and decision theory.
- Linear models for regressions.
- Linear models for classifications.
- Kernel methods and Gaussian processes.
- Sparse kernel methods (Support vector machines and Relevance vector machines).
- Bayesian methods and graphical methods.
- Expectation maximization.
- Principal components analysis and Independent component analysis.
- Hidden Markov models.