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How Do Reenforcement Learning Agents Decide Which Abstractions to Learn?
One of thei that i've worked on for a long time, and i'm always excited to think about it, is hierarchical reinforcement learning. This is really about learning abstract representations, especially abstraction, over time. One of the important open questions that i still struggle with and think about is, how do agents decide which abstractions to learn about? For us, maybe it's easy. But for reenforcement learning agents, this is still something that i would like them to acquire.