DouZero+:通过对手建模和教练引导学习来改进斗猪猪AI

Youpeng Zhao, Jian Zhao, Xu Hu, Wen-gang Zhou, Houqiang Li
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引用次数: 3

摘要

近年来,深度强化学习(DRL)在各种完全和不完全信息博弈中取得了重大突破。在这些游戏中,中国流行的纸牌游戏斗地主由于信息不完全,状态和动作空间大,以及协作元素,非常具有挑战性。最近,有人提出了一个名为DouZero的豆瓣猪人工智能系统。使用传统的蒙特卡罗方法,结合深度神经网络和不抽象人类先验知识的自玩程序进行训练,DouZero在现有的豆瓣猪人工智能程序中取得了最好的性能。在这项工作中,我们提出通过在DouZero中引入对手建模来增强DouZero。此外,我们还提出了一种新的教练网络,以进一步提高DouZero的性能并加快其训练过程。通过将以上两种技术集成到DouZero中,我们的豆瓣猪AI系统取得了更好的性能,在包括DouZero在内的400多个AI代理中名列Botzone排行榜榜首。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DouZero+: Improving DouDizhu AI by Opponent Modeling and Coach-guided Learning
Recent years have witnessed the great breakthrough of deep reinforcement learning (DRL) in various perfect and imperfect information games. Among these games, DouDizhu, a popular card game in China, is very challenging due to the imperfect information, large state and action space as well as elements of collaboration. Recently, a DouDizhu AI system called DouZero has been proposed. Trained using traditional Monte Carlo method with deep neural networks and self-play procedure without the abstraction of human prior knowledge, DouZero has achieved the best performance among all the existing DouDizhu AI programs. In this work, we propose to enhance DouZero by introducing opponent modeling into DouZero. Besides, we propose a novel coach network to further boost the performance of DouZero and accelerate its training process. With the integration of the above two techniques into DouZero, our DouDizhu AI system achieves better performance and ranks top in the Botzone leaderboard among more than 400 AI agents, including DouZero.
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