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Learning from Learners: Adapting Reinforcement Learning Agents to be Competitive in a Card Game

机译:从学习者学习:适应加强学习代理在纸牌游戏中竞争

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Learning how to adapt to complex and dynamic environments is one of the most important factors that contribute to our intelligence. Endowing artificial agents with this ability is not a simple task, particularly in competitive scenarios. In this paper, we present a broad study on how popular reinforcement learning algorithms can be adapted and implemented to learn and to play a real-world implementation of a competitive multiplayer card game. We propose specific training and validation routines for the learning agents, in order to evaluate how the agents learn to be competitive and explain how they adapt to each others' playing style. Finally, we pinpoint how the behavior of each agent derives from their learning style and create a baseline for future research on this scenario.
机译:学习如何适应复杂和动态环境是对我们智力有贡献的最重要因素之一。 赋予这种能力的人为代理不是一个简单的任务,特别是在竞争方案中。 在这篇论文中,我们对热处理学习算法的改编和实施方式的广泛研究是如何学习和扮演竞争多人卡游戏的真实实现。 我们为学习代理提出了特定的培训和验证例程,以评估代理商如何学会竞争,并解释它们如何适应彼此的演奏风格。 最后,我们确定了每个代理的行为如何源于他们的学习风格,并为此情景的未来研究创建基准。

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