Go to JKU Homepage
Institute for Machine Learning
What's that?

Institutes, schools, other departments, and programs create their own web content and menus.

To help you better navigate the site, see here where you are at the moment.

Theoretical Concepts of Machine Learning (1UE)

Course no.: 365.042
Lecturer: Günter Klambauer
Times/locations: Mon 14:30-15:15, room tba
Start: Thu, March 8, 2018
Mode: UE, 1h, weekly
Registration: KUSSS, opens an external URL in a new window

Motivation:

This practical course complements the lecture Theoretical Concepts of Machine Learning and aims at practicing the concepts and methods acquired in the lecture.

Topics:

  • Generalization error
  • Bias-variance decomposition
  • Error models
  • Model comparisons
  • Estimation theory
  • Statistical learning theory
  • Worst-case and average bounds on the generalization error
  • Structural risk minimization
  • Bayes framework
  • Evidence framework for hyperparameter optimization
  • Optimization techniques
  • Theory of kernel methods