040649 UK Machine Learning (2021W)
Continuous assessment of course work
Labels
REMOTE
Registration/Deregistration
Note: The time of your registration within the registration period has no effect on the allocation of places (no first come, first served).
- Registration is open from Mo 13.09.2021 09:00 to Th 23.09.2021 12:00
- Deregistration possible until Fr 15.10.2021 23:59
Details
max. 30 participants
Language: German
Lecturers
Classes (iCal) - next class is marked with N
- Thursday 07.10. 09:45 - 11:15 Digital
- Thursday 14.10. 09:45 - 11:15 Digital
- Thursday 21.10. 09:45 - 11:15 Digital
- Thursday 28.10. 09:45 - 11:15 Digital
- Thursday 04.11. 09:45 - 11:15 Digital
- Thursday 11.11. 09:45 - 11:15 Digital
- Thursday 18.11. 09:45 - 11:15 Digital
- Thursday 25.11. 09:45 - 11:15 Digital
- Thursday 02.12. 09:45 - 11:15 Digital
- Thursday 09.12. 09:45 - 11:15 Digital
- Thursday 16.12. 09:45 - 11:15 Digital
- Thursday 13.01. 09:45 - 11:15 Digital
- Thursday 20.01. 09:45 - 11:15 Digital
- Thursday 27.01. 09:45 - 11:15 Digital
Information
Aims, contents and method of the course
Assessment and permitted materials
Exercises.
Minimum requirements and assessment criteria
Minimum of 50% is required to pass.
Examination topics
All topics covered in class.
Reading list
Trevor Hastie, Robert Tibshirani, and Jerome Friedman. The elements of statistical learning. Springer Series in Statistics. Springer, New York, second edition, 2009. Data mining, inference, and prediction.Christophe Giraud. Introduction to high-dimensional statistics, volume 139 of Monographs on Statistics and Applied Probability. CRC Press, Boca Raton, FL, 2015.Gareth James, Daniela Witten, Trevor Hastie, and Robert Tibshirani.
An introduction to statistical learning, volume 103 of Springer Texts in Statistics. Springer, New York, 2013. With applications in R.Shai Shalev-Shwartz and Shai Ben-David. Understanding Machine
Learning: From Theory to Algorithms. Cambridge University Press,
USA, 2014.
An introduction to statistical learning, volume 103 of Springer Texts in Statistics. Springer, New York, 2013. With applications in R.Shai Shalev-Shwartz and Shai Ben-David. Understanding Machine
Learning: From Theory to Algorithms. Cambridge University Press,
USA, 2014.
Association in the course directory
Last modified: Fr 12.05.2023 00:12
- ERM classifiers.
-K-NN classifiers.
- Linear classifier and support vector machines
- Principal component analysis (PCA)
- High dimensional statistics & sparsity: Compressed sensing.
- High dimensional statistics & sparsity: Lasso.