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A Policy Representation Using Weighted Multiple Normal Distribution Real-time Reinforcement Learning Feasible for Varying Optimal Actions.

Hajime Kimura, Takeshi Aramaki, Shigenobu Kobayashi

发表年份
2003
引用次数
4
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摘要

In this paper, we challenge to solve a reinforcement learning problem for a 5-linked ring robot within a real-time so that the real-robot can stand up to the trial and error. On this robot, incomplete perception problems are caused from noisy sensors and cheap position-control motor systems. This incomplete perception also causes varying optimum actions with the progress of the learning. To cope with this problem, we adopt an actor-critic method, and we propose a new hierarchical policy representation scheme, that consists of discrete action selection on the top level and continuous action selection on the low level of the hierarchy. The proposed hierarchical scheme accelerates learning on continuous action space, and it can pursue the optimum actions varying with the progress of learning on our robotics problem. This paper compares and discusses several learning algorithms through simulations, and demonstrates the proposed method showing application for the real robot.

关键词

Reinforcement learningComputer scienceHierarchyArtificial intelligenceAction selectionAction (physics)Representation (politics)RobotScheme (mathematics)Robotics

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