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Improving Space Representation in Multiagent Learning via Tile Coding

机译:通过瓷砖编码改善多读学习中的空间表示

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Reinforcement learning is an efficient, widely used machine learning technique that performs well in problems that are characterized by a small number of states and actions. This is rarely the case in multiagent learning problems. For the multiagent case, standard approaches may not be adequate. As an alternative, it is possible to use techniques that generalize the state space to allow agents to learn through the use of abstractions. Thus, the focus of this work is to combine multiagent learning with a generalization technique, namely tile coding. This kind of method is key in scenarios where agents have a high number of states to explore. In the scenarios used to test and validate this approach, our results indicate that the proposed representation outperforms the tabular one and is then an effective alternative.
机译:强化学习是一种高效,广泛使用的机器学习技术,在少数州和动作的特征在一起。多读学习问题很少是这种情况。对于多层案例,标准方法可能不足。作为替代方案,可以使用概括状态空间的技术来允许代理通过使用抽象来学习。因此,这项工作的焦点是将多向学习与泛化技术相结合,即瓷砖编码。这种方法是方案的关键,代理商有很多州探索。在用于测试和验证这种方法的场景中,我们的结果表明所提出的表示优于表格之一,然后是有效的替代方案。

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