Mathematical and Statistical Foundations of Machine Learning
SoSe 2026
SoSe 2026
Due to its remarkable success in a wide range of applications, machine learning plays an increasingly prominent role in the intersection of mathematics, statistics, and data science. Consequently, it becomes more and more important to understand and develop theory that supports further advancement in machine learning. This course provides the fundamental concepts and frameworks in machine learning, including PAC learning framework, Rademacher complexity, VC-dimension, empirical risk minimization, support vector machine, kernel methods, and more.
Participants are expected to have knowledge of basic probability (WP3 Stochastics). Additional knowledge of advanced probability and analysis (WP20 Probability Theory) is also highly recommended.
Lectures:
Tue 14:00 to 16:00 in Room B 047
Thurs 10:00 to 12:00 in Room B 047
Exercises:
Wed 14:00 to 16:00 in Room B 133
Wed 16:00 to 18:00 in Room B 133
Students who are interested in participating are asked to register for the corresponding Moodle course, enrollment key: MFML2026.