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Complexity Analysis of Reinforcement Learning and Its Application to Robotics

机译:加固学习的复杂性分析及其在机器人中的应用

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Extended Abstract Reinforcement learning (RL) is a widely adopted theory in machine learning, which aims to handle the optimal decision of intelligent agent interacting with the stochastic dynamic environment. Its origin may come from the motivation of phycological observations since 1960's [1]. It blooms recently as the emerging of large sample data and powerful computation facility, especially the AlphaGo's beat over the human top Go player in 2016 [2].
机译:扩展抽象加固学习(RL)是机器学习中广泛采用的理论,旨在处理与随机动态环境相互作用的智能代理的最佳决策。它的起源可能来自自1960年代以来植物学观察的动机[1]。它最近绽放出了大型样本数据和强大的计算设施的新兴,特别是2016年在人类顶级去参加人类的alphago击败[2]。

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