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Using Imagery to Simplify Perceptual Abstraction in Reinforcement Learning Agents

机译:使用图像来简化强化学习代理中的感知抽象

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In this paper, we consider the problem of reinforcement learning in spatial tasks. These tasks have many states that can be aggregated together to improve learning efficiency. In an agent, this aggregation can take the form of selecting appropriate perceptual processes to arrive at a qualitative abstraction of the underlying continuous state. However, for arbitrary problems, an agent is unlikely to have the perceptual processes necessary to discriminate all relevant states in terms of such an abstraction. To help compensate for this, reinforcement learning can be integrated with an imagery system, where simple models of physical processes are applied within a low-level perceptual representation to predict the state resulting from an action. Rather than abstracting the current state, abstraction can be applied to the predicted next state. Formally, it is shown that this integration broadens the class of perceptual abstraction methods that can be used while preserving the underlying problem. Empirically, it is shown that this approach can be used in complex domains, and can be beneficial even when formal requirements are not met.
机译:在本文中,我们考虑了空间任务中加强学习的问题。这些任务有许多州可以聚合在一起以提高学习效率。在代理中,该聚合可以采取选择适当的感知程序以达到基础连续状态的定性抽象。然而,对于任意问题,代理商不太可能在对这种抽象方面歧视所有相关国家所需的感知过程。为了帮助补偿这一点,可以与图像系统集成加固学习,其中在低级感知表示内应用了简单的物理过程模型,以预测由动作产生的状态。而不是抽象当前状态,抽象可以应用于预测的下一个状态。正式地,显示该集成扩大了可以在保留潜在问题的同时使用的感知抽象方法。经验上,显示这种方法可以在复杂的域中使用,并且即使不符合正式要求,也可以是有益的。

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