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'Re:ROS': Prototyping of Reinforcement Learning Environment for Asynchronous Cognitive Architecture

机译:“RE:ROS”:异步认知架构的加固学习环境的原型设计

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Reinforcement learning (RL), which is a field of machine learning, is effective for behavior acquisition in robots. Asynchronous cognitive architecture, which is a method to model human intelligence, is also effective for behavior acquisition. Accordingly, the combination of RL and asynchronous cognitive architecture is expected to be effective. However, early work on the RL toolkit cannot apply asynchronous cognitive architecture because it cannot solve the difference between the asynchrony, which the asynchronous cognitive architecture has, and the synchrony, which RL modules have. In this study, we propose an RL environment for robots that can apply the asynchronous cognitive architecture by applying asynchronous systems to RL modules. We prototyped the RL environment named "Re:ROS."
机译:强化学习(RL)是机器学习领域,对机器人的行为获取有效。异步认知架构是一种模拟人类智能的方法,对行为采集也是有效的。因此,RL和异步认知架构的组合预计将有效。但是,RL Toolkit上的早期工作无法应用异步认知架构,因为它无法解决异步认知体系结构具有的异步与Syncrony之间的差异,以及RL模块的同步。在这项研究中,我们为可以通过将异步系统应用于RL模块来应用了可以应用异步认知架构的机器人的RL环境。我们原型被称为“RE:ROS”的RL环境。

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