Twin Delayed Multi-Agent Deep Deterministic Policy Gradient

Mengying Zhan, Jinchao Chen, Chenglie Du, Yuxin Duan
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引用次数: 3

Abstract

Recently, reinforcement learning has made remarkable achievements in the fields of natural science, engineering, medicine and operational research. Reinforcement learning addresses sequence problems and considers long-term returns. This long-term view of reinforcement learning is critical to find the optimal solution of many problems. The existing multi- agent reinforcement learning algorithms have the problem of overestimation in estimating the Q value. Unfortunately, there have not been many studies on overestimation of agent reinforcement learning, which will affect the learning efficiency of reinforcement learning. Based on the traditional multi-agent reinforcement learning algorithm, this paper improves the actor network and critic network, optimizes the overestimation of Q value and adopts the update delayed method to make the actor training more stable. In order to test the effectiveness of the algorithm structure, the modified method is compared with the traditional MADDPG, DDPG and DQN methods in the simulation environment.
双延迟多智能体深度确定性策略梯度
近年来,强化学习在自然科学、工程、医学和运筹学等领域取得了令人瞩目的成就。强化学习解决了序列问题,并考虑了长期回报。这种强化学习的长期观点对于找到许多问题的最佳解决方案至关重要。现有的多智能体强化学习算法在估计Q值时存在估计过高的问题。遗憾的是,关于智能体强化学习的高估问题的研究并不多,这会影响强化学习的学习效率。本文在传统的多智能体强化学习算法的基础上,改进了行动者网络和评论家网络,优化了Q值的高估,并采用更新延迟的方法使行动者训练更加稳定。为了验证该算法结构的有效性,在仿真环境中将改进后的方法与传统的MADDPG、DDPG和DQN方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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