Lernende Systeme/Machine Learning (WS 2014/2015)
General Information
- For a general course description please read the corresponding pages from the WIAI module guide.
- You find administrative information at UnivIS.
- Participants should sign up for the course in the virtual campus.
Recommended Reading / Links
Recommended textbook:
- Tom Mitchell: Machine Learning, McGraw Hill, 1997.
- Christopher Bishop: Pattern Recognition and Machine Learning, Springer, 2006.
Relevant links/sources:
- Claude Sammut, Geoffrey I. Webb (Eds.): Encyclopedia of Machine Learning. Springer, 2010.
- Machine Learning Eintrag bei aaai.org
- Machine Learning Abschnitt bei AI on the Web
- UCI Machine Learning Repository
- Statlog
- Fernandez-Delgado et al. (2014). Do we Need Hundreds of Classiers to Solve Real World Classication Problems?, Journal of Machine Learning Research, 15, 3133-3181.
- Rapidminer
Lecture Notes
- Basic Concepts of Machine Learning [pdf]
- Foundations of Concept Learning [pdf]
- Decision Trees, Avoiding Overfitting [pdf]
- Perceptrons and Multilayer-Perceptrons [pdf]
- Human Concept Learning [pdf]
- Inductive Logic Programming [pdf]
- Genetic Algorithms / Genetic Programming [pdf]
- Instance-based Learning [pdf]
- Bayesian Learning/Graphical Models [pdf]
- Kernel Methods, Support Vector Machines [pdf]
- Hidden Markov Models [pdf]
- Reinforcement Learning [pdf]
- Inductive Programming [pdf]
- Unsupervised Learning (Clusteranalysis) [pdf]
- Further Topics in and Applications of Machine Learning
Course Archive
[WS 04/05] [SS 05] [WS 05/06] [WS 06/07] [<link kogsys/teaching/archiv/ws0708/lernende_systeme/ - extern>WS 07/08</link>] [<link kogsys/teaching/archiv/ws0809/lernende_systeme/ - extern>WS 08/09</link>] [WS 09/10] [WS 10/11] [WS 11/12] [ WS 12/13] [WS 13/14]