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      Tractable Reinforcement Learning of Signal Temporal Logic Objectives

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          Abstract

          Signal temporal logic (STL) is an expressive language to specify time-bound real-world robotic tasks and safety specifications. Recently, there has been an interest in learning optimal policies to satisfy STL specifications via reinforcement learning (RL). Learning to satisfy STL specifications often needs a sufficient length of state history to compute reward and the next action. The need for history results in exponential state-space growth for the learning problem. Thus the learning problem becomes computationally intractable for most real-world applications. In this paper, we propose a compact means to capture state history in a new augmented state-space representation. An approximation to the objective (maximizing probability of satisfaction) is proposed and solved for in the new augmented state-space. We show the performance bound of the approximate solution and compare it with the solution of an existing technique via simulations.

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          Author and article information

          Journal
          26 January 2020
          Article
          2001.09467
          ed52a238-2d14-4188-8229-cb48653e6257

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          cs.LG cs.AI cs.RO stat.ML

          Robotics,Machine learning,Artificial intelligence
          Robotics, Machine learning, Artificial intelligence

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