Automatic State Abstraction from Demonstration
Cobo, Luis Carlos (Georgia Institute of Technology) | Zang, Peng (Georgia Institute of Technology) | Jr., Charles Lee Isbell (Georgia Institute of Technology) | Thomaz, Andrea Lockerd (Georgia Institute of Technology)
Learning from Demonstration (LfD) is a popular technique for building decision-making agents from human help. Traditional LfD methods use demonstrations as training examples for supervised learning, but complex tasks can require more examples than is practical to obtain. We present Abstraction from Demonstration (AfD), a novel form of LfD that uses demonstrations to infer state abstractions and reinforcement learning (RL) methods in those abstract state spaces to build a policy. Empirical results show that AfD is greater than an order of magnitude more sample efficient than jus tusing demonstrations as training examples, and exponentially faster than RL alone.
Jul-19-2011
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