
Hierarchical and Continual RL with Doina Precup - #567
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
00:00
Exploring Abstraction in Reinforcement Learning
This chapter explores the intricacies of reinforcement learning with a focus on the importance of abstract representations across different timescales. It discusses the necessity for agents to acquire multi-level reasoning capabilities, drawing parallels to human cognitive processes, while addressing the challenges of allowing agents to autonomously select their learning abstractions.
Transcript
Play full episode