title |
---|
Home |
This website is the written documentation of the Seminar Principles of Data Mining and Learning Algorithms – „Learning Theory“ MA-INF 4209, taught at the University of Bonn during the Winter Termin 2018/2019 by Pascal Welke & Michael Kamp.
The seminar is based on the book „Understanding Machine Learning“ by Shai Shalev-Shwartz and Shai Ben-David. Below, you find the write-ups of our sessions.
Session | Presenter | Book Chapter | Link | Screencast |
---|---|---|---|---|
1 | Michael Kamp | 1 & 2 | Introduction and Gentle Start | Screencast |
2 | Mikhail Borisov | 3 & 4 | APAC Learning and Uniform Convergence | Screencast |
3 | Lukas Drexler | 5.1 | No Free Lunch Theorem | Screencast |
3 | Lukas Drexler | 5.2 | Error Decomposition | Screencast |
3 | Lukas Drexler | 6 | VC-Dimension | Screencast |
4 | Oliver Kiss | 6 | Addition VC-Dimension | Screencast |
4 | Oliver Kiss | 7 | Nonuniform Learnability | Screencast |
4 | Oliver Kiss | 6 & 7 | Q&A | |
5 | Maximilian Thiessen | 7 | MDL and Other Notions of Learnability | Screencast |
5 | Pascal Welke | 7 | An Alternative Proof for Thm 7.2 | |
5 | Maximilian Thiessen | 8 | The Runtime of Learning | Screencast |
6 | Sara Hahner | 26 | Rademacher Complexity | Screencast |
7 | Zhuofan Liu | 30 & 31 | Compression Bounds & PAC-Bayes | Screencast |
X | All | All | Collected Errata |