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Automatic Abstraction in Reinforcement Learning Using Ant System Algorithm

机译:蚂蚁系统算法加固学习中的自动抽象

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Nowadays developing autonomous systems, which can act in various environments and interactively perform their assigned tasks, are intensively desirable. These systems would be ready to be applied in different fields such as medicine, controller robots and social life. Reinforcement learning is an attractive area of machine learning which addresses these concerns. In large scales, learning performance of an agent can be improved by using hierarchical Reinforcement Learning techniques and temporary extended actions. The higher level of abstraction helps the learning agent approach lifelong learning goals. In this paper a new method is presented for discovering subgoal states and constructing useful skills. The method utilizes Ant System optimization algorithm to identify bottleneck edges, which act like bridges between different connected areas of the problem space. Using discovered subgoals, the agent creates temporal abstractions, which enable it to explore more effectively. Experimental Results show that the proposed method can significantly improve the learning performance of the agent.
机译:如今,开发可以在各种环境中采取行动并交互地执行分配任务的自治系统是集中的。这些系统将准备应用于不同领域,如医学,控制器机器人和社交生活。强化学习是一个有吸引力的机器学习领域,这些机器学习都解决了这些问题。在大规模中,可以通过使用分层加强学习技术和临时扩展动作来改善代理的学习性能。更高水平的抽象有助于学习代理方法终身学习目标。本文提出了一种新方法,用于发现亚古国国家并构建有用技能。该方法利用ANT系统优化算法来识别瓶颈边缘,其起到问题空间的不同连接区域之间的桥接。使用已发现的子站点,代理创建时间抽象,使其能够更有效地探索。实验结果表明,该方法可以显着提高代理的学习性能。

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