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Reinforcement Learning in Multi-Dimensional State-Action Space Using Random Rectangular Coarse Coding and Gibbs Sampling

doi 10.1109/iros.2007.4399401
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Date

October 1, 2007

Authors
Hajime Kimura
Publisher

IEEE


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