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Reinforcement Learning in Large State Spaces Simulated Robotic Soccer as a Testbed

机译:大状态空间中的加固学习模拟机器人足球作为试验台

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Large state spaces and incomplete information are two problems that stand out in learning in multi-agent systems. In this paper we tackle them both by using a combination of decision trees and Bayesian networks (BNs) to model the environment and the Q-function. Simulated robotic soccer is used as a testbed, since there agents are faced with both large state spaces and incomplete information. The long-term goal of this research is to define generic techniques that allow agents to learn in large-scaled multi-agent systems.
机译:大状态空间和不完整的信息是在多代理系统中学习时突出的两个问题。在本文中,我们通过使用决策树和贝叶斯网络(BNS)的组合来解决它们来模拟环境和Q函数。模拟机器人足球用作试验台,因为代理人面临着大状态空间和不完整的信息。该研究的长期目标是定义允许代理商在大规模的多代理系统中学习的通用技术。

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