强化学习中连续动作控制的精确评估

Fengkai Ke, Daxing Zhao, Guodong Sun, Wei Feng
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引用次数: 0

摘要

随着深度学习的发展,强化学习也逐渐进入人们的视野,强化学习在游戏、围棋游戏等领域取得了显著的成绩,但这些领域或任务所涉及的控制问题大多是具有足够奖励的离散动作控制。强化学习中的连续动作控制更接近实际控制问题,被认为是通向人工智能的主要通道之一,因此也是研究者的研究热点之一。传统的用于强化学习的连续控制算法对具有单个标量值的多个输出的网络进行评估。本文提出了一种准确的评价机制和相应的目标函数,以加快强化学习的训练过程。实验结果表明,log-cosh目标函数的准确评估可以使机械臂更快地掌握任务,收敛并完成训练任务。
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Precise Evaluation for Continuous Action Control in Reinforcement Learning
With the development of deep learning, reinforcement learning also gradually into the eye, reinforcement learning has made remarkable achievements in games, go games and other fields, but most of the control problems involved in these fields or tasks are discrete action control with sufficient rewards. Continuous action control in reinforcement learning is closer to the actual control problem, and is considered as one of the main channels leading to artificial intelligence, so it is also one of the research hotspots of researchers. The traditional continuous control algorithm for reinforcement learning evaluates the network with multiple outputs of a single scalar value. In this paper, an accurate evaluation mechanism and corresponding objective function are proposed to accelerate the reinforcement learning training process. The experimental results show that the accurate evaluation of log-cosh objective function can make the robot arm grasp the task more quickly, converge and complete the training task.
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