Efficient skill learning using abstraction selection

IJCAI(2009)

引用 103|浏览58
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摘要
We present an algorithm for selecting an appropriate abstraction when learning a new skill. We show empirically that it can consistently select an appropriate abstraction using very little sample data, and that it significantly improves skill learning performance in a reasonably large real-valued reinforcement learning domain.
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关键词
sample data,large real-valued reinforcement,efficient skill,new skill,abstraction selection,appropriate abstraction
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