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Efficient Reinforcement Learning with Relocatable Action Models

机译:通过可移动动作模型进行有效的强化学习

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摘要

Realistic domains for learning possess regularities that make it possible to generalize experience across related states. This paper explores an environment-modeling framework that represents transitions as state-independent outcomes that are common to all states that share the same type. We analyze a set of novel learning problems that arise in this framework, providing lower and upper bounds. We single out one particular variant of practical interest and provide an efficient algorithm and experimental results in both simulated and robotic environments.
机译:现实的学习领域具有规律性,这使得可以概括跨相关状态的经验。本文探讨了一个环境建模框架,该框架将过渡表示为与状态无关的结果,这些结果对于共享同一类型的所有状态都是通用的。我们分析了在此框架中出现的一组新颖的学习问题,提供了上下限。我们挑选出一个具有实际意义的特定变体,并在模拟和机器人环境中提供有效的算法和实验结果。

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