Well-Posedness of Singular Switched Explicit Models and Potential Applications in Model-Based Reinforcement Learning for Constrained Systems
INI Seminar Room 2 via YouTube
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Explore the mathematical foundations of singular switched explicit models and their applications in reinforcement learning through this 39-minute seminar. Delve into the well-posedness theory of these complex mathematical models, examining their stability and solution existence properties. Learn how these theoretical frameworks can be applied to model-based reinforcement learning systems that operate under constraints. Discover the intersection between advanced mathematical modeling and machine learning applications, particularly focusing on systems where traditional approaches may face limitations due to singular behavior or switching dynamics. Gain insights into how these mathematical tools can enhance the reliability and performance of constrained reinforcement learning systems, with practical implications for real-world applications where system constraints and switching behaviors are critical considerations.
Syllabus
Date: 12th Jun 2025 - 10:30 to 11:30
Taught by
INI Seminar Room 2