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Case-Based Multiagent Reinforcement Learning: Cases as Heuristics for Selection of Actions

机译:基于案例的多轴加固学习:案例作为启发式的选择

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This work presents a new approach that allows the use of cases in a case base as heuristics to speed up Multiagent Reinforcement Learning algorithms, combining Case-Based Reasoning (CBR) and Multiagent Reinforcement Learning (MRL) techniques. This approach, called Case-Based Heuristically Accelerated Multiagent Reinforcement Learning (CB-HAMRL), builds upon an emerging technique, Heuristic Accelerated Reinforcement Learning (HARL), in which RL methods are accelerated by making use of heuristic information. CB-HAMRL is a subset of MRL that makes use of a heuristic function H derived from a case base, in a Case-Based Reasoning manner. An algorithm that incorporates CBR techniques into the Heuristically Accelerated Minimax-Q is also proposed and a set of empirical evaluations were conducted in a simulator for the Littman's robot soccer domain, comparing the three solutions for this problem: MRL, HAMRL and CB-HAMRL. Experimental results show that using CB-HAMRL, the agents learn faster than using RL or HAMRL methods.
机译:这项工作介绍了一种新方法,允许在壳体基础上使用案例作为启发式,以加速多态强化学习算法,组合基于案例的推理(CBR)和多源强度学习(MRL)技术。这种方法称为基于案例的启发式加速学习(CB-HAMRL),在新兴技术,启发式加速增强学习(HARL),其中RL方法通过利用启发式信息加速。 CB-HAMRL是MRL的子集,其利用基于案例的推理方式使用从案例基础的启发式功能H.还提出了一种将CBR技术结合到启发式加速的MIMIMAX-Q的算法,并且在Littman的机器人足球域中的模拟器中进行了一组经验评估,比较了这个问题的三个解决方案:MRL,HAMRL和CB-HAMRL。实验结果表明,使用CB-HAMRL,代理商比使用RL或HAMRL方法更快地学习。

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