This is an archived version of the Machine Learning Lab website for documentation purposes. The host is in no way affiliated with the University of Freiburg, its Faculty of Engineering or any of its members.
Special lecture
Introduction to Machine Learning
Dr. Joschka Bödecker, Manuel Blum
- Dates and Place (room changed!)
- Tuesday, 16:15 - 17:45, Building 82, Room HS00-006 (Kinohörsaal)
- Thursday, 8:15 - 9:45, Building 82, Room HS00-006 (Kinohörsaal)
Room change forTuesday, June 2nd:lecture will be given in building 101, HS 00-026Lecture will be at the usual place: Building 82, Room HS00-006 (Kinohörsaal).- Thursday, July 9th: lecture cancelled
- Invited lecture, July 23rd: Dr. Sascha Lange (5d lab).
- Exercises
- Exercise dates: 30.4. / 19.5. / 9.6. / 23.6. / 7.7. / 21.7.
- Credits
- 6 ECTS
- Special meeting
- Friday, 18.9., 10am, Building 82, Room HS00-006 (Kinohörsaal)
- ask questions about the exams
- Exam
- registration via examination office
- all master students and bachelor ESE: written exam. date: September 25th, 2015, 9-11 in 101-36.
- bachelor students CS: oral exam. date: September 28th, 2015.
Educational objectives
Understanding of the basic concepts of machine learning, ability to think on different levels of abstraction, knowledge of exemplary implementations of learning algorithms, ability to independently identify connections of the concepts presented.
Course Content
Characterization of supervised, unsupervised and reinforcement learning, concept learning, decision trees, neural networks, probabilistic methods, committee techniques, reinforcement learning.
Slides
Exercises
Examples
Optional Books
- The Elements of Statistical Learning: Data Mining, Inference, and Prediction by Trevor Hastie, Robert Tibshirani and Jerome Friedman. Springer, Second Edition, 2009.
- Information Theory, Inference, and Learning Algorithms by David J.C. MacKay, Cambridge University Press, 2003.
Additional References
- J. Shotton et al., "Real-Time Human Pose Recognition in Parts from a Single Depth Image", CVPR 2011 (video)
- Comprehensive recent overview about ensembles of decision trees: A. Criminisi et al., "Decision Forests for Classification, Regression, Density Estimation, Manifold Learning and Semi-Supervised Learning", Microsoft Technical Report MSR-TR-2011-114, 2011
Resources
- Cluster of excellence BrainLinks-BrainTools
- Video channel of the Machine Learning Lab