Foundations of Reinforcement Learning
ECE 524
1244
1244
Info tab content
The course is a graduate level course, focusing on theoretical foundations of reinforcement learning. It covers basics of Markov Decision Process (MDP), dynamic programming-based algorithms, policy optimization, planning, exploration, as well as information theoretical lower bounds. Various advanced topics are also discussed, including off-policy evaluation, function approximation, partial observable MDP and deep reinforcement learning. This course puts special emphases on the algorithms and their theoretical analyses. Prior knowledge on linear algebra, probability theory, and stochastic process is required.
Instructors tab content
Sections tab content
Section L01
- Type: Lecture
- Section: L01
- Status: O
- Enrollment: 23
- Capacity: 60
- Class Number: 41282
- Schedule: TTh 09:30 AM-10:50 AM - Engineering Quad B-Wing B205