Statistical Learning Theory, Spring Semester 2024
Instructors
Prof. Dr. Joachim M. BuhmannAssistants
Vignesh Ram SomnathDr. Alina Dubatovka
Evgenii Bykovetc
Dr. Fabian Laumer
Ivan Ovinnikov
João Lourenço Borges Sá Carvalho
Patrik Okanovic
Robin Geyer
Xia Li
Yilmazcan Özyurt
News
- The exam will be held on June 3 2024, from 9 AM - 12 PM in rooms ETA F5 & ETF C1.
General Information
This is the last offering of the Statistical Learning Theory course.
The ETHZ Course Catalogue information can be found here.
The course covers advanced methods of statistical learning. The fundamentals of Machine Learning as presented in the course "Introduction to Machine Learning" and "Advanced Machine Learning" are expanded and, in particular, the following topics are discussed:
- Variational methods and optimization. We consider optimization approaches for problems where the optimizer is a probability distribution. We will discuss concepts like maximum entropy, information bottleneck, and deterministic annealing.
- Clustering. This is the problem of sorting data into groups without using training samples. We discuss alternative notions of "similarity" between data points and adequate optimization procedures.
- Model selection and validation. This refers to the question of how complex the chosen model should be. In particular, we present an information theoretic approach for model validation.
- Statistical physics models. We discuss approaches for approximately optimizing large systems, which originate in statistical physics (free energy minimization applied to spin glasses and other models). We also study sampling methods based on these models.
Please use Moodle for questions regarding course material, organization and projects.
Time and Place
Type | Time | Place |
---|---|---|
Lectures | Mon 10:15-12:00 | HG E 7 |
Tue 17:15-18:00 | HG G 5 | |
Exercises | Mon 16:15-18:00 | HG G 3 |
Course Script
The latest version of the course Script can be found here, with additional chapters on Graph Clustering and Mean Field Approximation at the end of the script.
An older version of the same script can be found at here. It's no longer maintained, but it contains useful notes for some chapters not covered yet in the latest version.
Lectures
Tutorials
Date | Tutorial | Recording Links | Exercises |
---|---|---|---|
Februrary 26 |
Calculus Recap
Functional Derivatives |
Recording |
Exercise 1
Solution 1 |
March 4 |
Information Theory Recap
(Taught on Blackboard) |
Recording |
Exercise 2
Solution 2 |
March 11 | Sampling | Unavailable |
Exercise 3
Solution 3 |
March 18 | Deterministic Annealing | Recording |
Exercise 4
Solution 4 |
March 25 |
Histogram Clustering
(Taught on Blackboard) |
Recording |
Exercise 5
Solution 5 |
April 08 |
Information Bottleneck
|
Recording |
Exercise 6
Solution 6 |
April 15 |
No Tutorial
|
||
April 22 |
Constant Shift Embeddings
|
Recording |
Exercise 7
Solution 7 |
April 29 |
Mean Field Approximation
(Taught on Blackboard) |
Recording |
Exercise 8
Solution 8 |
May 06 |
Model Selection
|
Recording | No Exercise |
May 13 |
Approximate Sorting
|
Recording
(Combined with Prof. Buhmann's lecture) |
Exercise 10
Solution 10 |
Past written Exams
2018 [Exam] [Solution]
2019 [Exam] [Solution]
2020 [Exam (with solution)]
Projects
Projects are coding exercises that concern the implementation of an algorithm taught in the lecture/exercise class.
There will be four coding exercises, with a time span of approximately two weeks per coding exercise. Each one of them will be graded as not passed or with a passing grade ranging from 4 to 6.
In order to be admitted to the exam the student has to pass (i.e. a grade of 4) in 3 of the 4 projects, and the final grade for the whole class is the weighted average 0.7 exam + 0.3 project. The coding exercises will be provided and submitted via moodle.
Project Release Date | Project Due Date | Topic | Moodle Link |
---|---|---|---|
March 4 | March 18 | Sampling and Annealing | Coding Exercise 1 |
March 25 | April 15 | Histogram Clustering | Coding Exercise 2 |
April 22 | May 6 | Constant Shift Embeddings | Coding Exercise 3 |
May 13 | May 27 | Model Validation | Coding Exercise 4 |
Other Resources
- Duda, Hart, Stork: Pattern Classification, Wiley Interscience, 2000.
- Hastie, Tibshirani, Friedman: The Elements of Statistical Learning, Springer, 2001.
- L. Devroye, L. Gyorfi, and G. Lugosi: A probabilistic theory of pattern recognition. Springer, New York, 1996
Web Acknowledgements
The web-page code is based (with modifications) on the one of the course on Machine Learning (Fall Semester 2013; Prof. A. Krause).