Causality and Reinforcement Learning
- Organized by: Prof. Joschka Boedecker, Hanne Raum
- Course number: 411LE13S-7344-M
- Language: English
- Introductory Lecture: 18.4.2024, 10:00-12:00, IMBIT, Georges-Köhler-Allee 201, Nexus-Lab
- ILIAS link
Overview:
While machine learning excels at identifying correlations within data, it often falls short in uncovering and understanding the underlying causal mechanisms, leaving the fundamental question of "why?" unanswered. Integrating causal relationships can help transfer models to different environments, ensure invariance to distribution shifts, provide clearer explanations for black box models or help to find compact meaningful models.
In this seminar, we will explore how causality can help us in different machine learning approaches.
Format:
The course will be given in person, in the form of a block seminar, where papers are read and presented by students
Application process:
Submitting a short motivational statement at ILIAS.
Paper Selection: