Reward Signal
Reward signals are crucial for guiding reinforcement learning (RL) agents towards desired behaviors, but designing effective reward functions remains a significant challenge. Current research focuses on automating reward design using large language models (LLMs) to interpret human preferences or demonstrations, developing novel reward shaping techniques to improve learning efficiency in sparse reward scenarios, and exploring alternative reward representations such as multivariate distributions or implicit reward functions. These advancements are improving the applicability of RL to complex real-world problems, particularly in robotics, autonomous driving, and human-computer interaction, by enabling more efficient and robust learning.
Papers
December 3, 2023
November 9, 2023
October 20, 2023
October 13, 2023
July 25, 2023
July 22, 2023
July 3, 2023
June 16, 2023
May 23, 2023
March 29, 2023
March 28, 2023
March 19, 2023
February 8, 2023
December 29, 2022
December 28, 2022
October 12, 2022
October 10, 2022
September 19, 2022