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Multi-criteria expertness based cooperative Q-learning

机译:基于多准则专业知识的协作Q学习

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摘要

One of the most influential points in cooperative learning is the type of exchanging information. If the content of exchanging information among agents is rich, cooperation gives rise to better results. To extract proper knowledge of agents during the cooperation process, some expertness measures that assign expertness levels to the other agents are used. In this paper, a new method named Multi-Criteria Expertness based cooperative Q-learning (MCE) is proposed that utilizes all of the expertness measures and attempts to enrich the exchanging information more efficiently. In MCE, all expertness measures are considered simultaneously and collective knowledge is equal to the combination of learned knowledge by each of expertness measures. The experimental results confirm outstanding performance of the proposed method on a sample maze world and a hunter-prey problem.
机译:合作学习中最有影响力的点之一就是信息交换的类型。如果在座席之间交换信息的内容丰富,则合作会带来更好的结果。为了在合作过程中提取代理商的适当知识,使用了一些将专家等级分配给其他代理商的专家措施。本文提出了一种新的方法,即基于多标准专家知识的协作Q学习(MCE),该方法利用了所有专家知识方法,并试图更有效地丰富交换信息。在MCE中,同时考虑所有专家措施,并且集体知识等于每种专家措施所学知识的组合。实验结果证实了该方法在迷宫世界和猎人-猎物问题上的出色表现。

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