Focused model-learning and planning for non-Gaussian continuous state-action systems

ICRA(2017)

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摘要
We introduce a framework for model learning and planning in stochastic domains with continuous state and action spaces and non-Gaussian transition models. It is efficient because (1) local models are estimated only when the planner requires them; (2) the planner focuses on the most relevant states to the current planning problem; and (3) the planner focuses on the most informative and/or high-value actions. Our theoretical analysis shows the validity and asymptotic optimality of the proposed approach. Empirically, we demonstrate the effectiveness of our algorithm on a simulated multi-modal pushing problem.
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关键词
nonGaussian continuous state-action systems,stochastic domains,planning problem,asymptotic optimality,simulated multimodal pushing problem
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