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Knowledge Co-creation Framework: Novel Transfer Learning Method in Heterogeneous Multi-agent Systems

机译:知识共创框架:异构多助理系统中的新型转移学习方法

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This paper presents a framework, called the knowledge co-creation framework (KCF), for the heterogeneous multi-robot transfer learning method with utilization of cloud-computing resources. A multi-agent robot system (MARS) that utilizes reinforcement learning and transfer learning methods has recently been deployed in real-world situations. In MARS, autonomous agents obtain behavior autonomously through multi-agent reinforcement learning and the transfer learning method enables the reuse of the knowledge of other robots' behavior, such as for cooperative behavior. These methods, however, have not been fully and systematically discussed. To address this, KCF leverages the transfer learning method and cloud-computing resources. In prior research, we developed a hierarchical transfer learning (HTL) method as the core technology of knowledge co-creation and investigated its effectiveness in a dynamic multi-agent environment. The HTL method hierarchically abstracts obtained knowledge by ontological methods. Here, we evaluate the effectiveness of HTL with two types of ontology: action and state.
机译:本文介绍了一个框架,称为知识共建框架(KCF),用于具有利用云计算资源的异构多机器人传输学习方法。最近在现实世界的情况下部署了利用强化学习和转移学习方法的多智能机械师系统(MARS)。在火星中,自治代理通过多功能增强学习自主地获得行为,传输学习方法能够重用其他机器人行为的知识,例如合作行为。然而,这些方法尚未完全和系统地讨论。要解决此问题,KCF利用传输学习方法和云计算资源。在现有研究中,我们开发了一个分层转移学习(HTL)方法作为知识共同创建的核心技术,并在动态多智能经纪环境中调查了其有效性。 HTL方法通过本体方法进行分层摘要获得知识。在这里,我们评估HTL的有效性与两种类型的本体:行动和状态。

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