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A Service Recommendation Using Reinforcement Learning for Network-based Robots in Ubiquitous Computing Environments

机译:在普遍存在的计算环境中使用加固学习的服务推荐

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Ubiquitous Robotic Companion (URC) is a new concept for the network-based robot platform which can enable to be following its master wherever or whenever he/she be in order to provide necessary services. The robot platforms in present normally interest in providing services through the direct interaction in responding to the user''s demands. On the other hand, URC services are required to be provided by the means of recognizing the circumstances and taking a user''s preference into account. In this paper, we propose a service recommendation scheme for URC robots. The proposed service recommendation, developed based on the reinforcement learning, can be used to provide personalized services by learning users'' preferences or tasks through the interaction with users. Using simulation for rapid testing, we evaluate of the proposed scheme under a variety of user modeling types and discount factors.
机译:无处不在的机器人伴侣(URC)是基于网络的机器人平台的新概念,可以随时随地或随时随地遵循其主人,以便提供必要的服务。目前的机器人平台通常兴趣通过对用户需求的直接交互提供服务。另一方面,需要通过认识到这种情况并考虑用户偏好的方法来提供URC服务。在本文中,我们为URC机器人提出了一种服务推荐方案。根据强化学习开发的拟议服务建议可用于通过与与用户的互动学习用户的偏好或任务来提供个性化服务。利用仿真进行快速测试,我们根据各种用户建模类型和折扣因子评估所提出的方案。

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