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Reinforcement learning vs human programming in tetherball robot games

机译:加固学习与Therball机器人游戏中的人类节目

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Reinforcement learning of motor skills is an important challenge in order to endow robots with the ability to learn a wide range of skills and solve complex tasks. However, comparing reinforcement learning against human programming is not straightforward. In this paper, we create a motor learning framework consisting of state-of-the-art components in motor skill learning and compare it to a manually designed program on the task of robot tetherball. We use dynamical motor primitives for representing the robot's trajectories and relative entropy policy search to train the motor framework and improve its behavior by trial and error. These algorithmic components allow for high-quality skill learning while the experimental setup enables an accurate evaluation of our framework as robot players can compete against each other. In the complex game of robot tetherball, we show that our learning approach outperforms and wins a match against a high quality hand-crafted system.
机译:强化学习运动技能是一个重要的挑战,以便赋予机器人能够学习广泛的技能和解决复杂任务。然而,比较对人类节目的强化学习并不直接。在本文中,我们创建了一种由汽车学习中的最先进的组件组成的电机学习框架,并将其与机器人Tetherball任务的手动设计的程序进行比较。我们使用动态电机原语来代表机器人的轨迹和相对熵策略搜索,以培训电机框架并通过试验和错误提高其行为。这些算法组件允许高质量技能学习,而实验设置可以准确评估我们的框架,因为机器人玩家可以相互竞争。在机器人Tetherball的复杂游戏中,我们表明我们的学习方法优于胜过并赢得了对高品质手工制作系统的比赛。

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