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MDPs with Unawareness in Robotics

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 نشر من قبل Joseph Y. Halpern
 تاريخ النشر 2020
  مجال البحث الهندسة المعلوماتية
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We formalize decision-making problems in robotics and automated control using continuous MDPs and actions that take place over continuous time intervals. We then approximate the continuous MDP using finer and finer discretizations. Doing this results in a family of systems, each of which has an extremely large action space, although only a few actions are interesting. We can view the decision maker as being unaware of which actions are interesting. We can model this using MDPUs, MDPs with unawareness, where the action space is much smaller. As we show, MDPUs can be used as a general framework for learning tasks in robotic problems. We prove results on the difficulty of learning a near-optimal policy in an an MDPU for a continuous task. We apply these ideas to the problem of having a humanoid robot learn on its own how to walk.

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