State Abstraction
State abstraction simplifies complex systems by reducing the number of states considered, improving efficiency and generalization in tasks like reinforcement learning and control systems verification. Current research focuses on developing data-driven methods for constructing these abstractions, particularly for high-dimensional or continuous state spaces, often employing techniques like neural networks, Markov decision processes (MDPs), and hierarchical clustering. This work is significant because it enables the application of AI and control algorithms to real-world problems previously intractable due to computational complexity, with applications ranging from robotics and autonomous driving to healthcare and game playing.
Papers
October 3, 2024
August 16, 2024
August 12, 2024
July 29, 2024
June 27, 2024
February 5, 2024
November 16, 2023
July 19, 2023
June 20, 2023
May 9, 2023
April 24, 2023
March 8, 2023
March 6, 2023
March 2, 2023
January 27, 2023
December 14, 2022
November 6, 2022
October 30, 2022
October 13, 2022