
Hierarchical and Continual RL with Doina Precup - #567
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
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The Role of Reward Specification in Reinforcement Learning
This chapter explores the critical importance of reward specification in reinforcement learning agents and its impact on their learning dynamics. It discusses how preferences can be mapped into reward signals and examines the complexities and limitations of traditional reward functions. Additionally, the chapter highlights ongoing research to improve agents' adaptability and learning processes through iterative adjustments to reward mechanisms.
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