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Improving Reinforcement Learning Results with Qualitative Spatial Representation

机译:定性空间表示法改善强化学习效果

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Reinforcement learning and Qualitative Spatial Reasoning methods have been successfully applied to create agents able to solve Artificial Intelligence problems in games, robotics, simulated or real. Generally, reinforcement learning methods represent the objects' position as quantitative values, performing the experiments considering these values. However, the humancommonsense understanding of the world is qualitative. This work proposes a hybrid method, that uses a qualitative formalism with reinforcement learning, named QRL, and is able to get better results than traditional methods. We have applied this proposal in the robot soccer domain and compared the results with traditional reinforcement learning method. The results show that, by using a qualitative spatial representation with reinforcement learning, the agent can learn optimal policies and perform more goals than quantitative representation.
机译:强化学习和定性空间推理方法已成功应用于创建能够解决游戏,机器人,模拟或真实人工智能问题的代理。通常,强化学习方法将对象的位置表示为定量值,并在考虑这些值的情况下进行实验。但是,人类对世界的常识是定性的。这项工作提出了一种混合方法,该方法使用定性形式主义和强化学习,称为QRL,与传统方法相比,能够获得更好的结果。我们将此建议应用于机器人足球领域,并将结果与​​传统的强化学习方法进行了比较。结果表明,通过使用具有强化学习的定性空间表示,与定量表示相比,代理可以学习最佳策略并执行更多目标。

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