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Real-Time Interactive Reinforcement Learning for Robots

Andrea L. Thomaz, Guy Hoffman, Cynthia Breazeal

发表年份
2005
引用次数
66

摘要

It is our goal to understand the role real-time human in-teraction can play in machine learning algorithms for robots. In this paper we present Interactive Reinforce-ment Learning (IRL) as a plausible approach for train-ing human-centric assistive robots by natural interac-tion. We describe an experimental platform to study IRL, pose questions arising from IRL, and discuss ini-tial observations obtained during the development of our system.

关键词

RobotReinforcement learningComputer scienceHuman–computer interactionRobot learningInteractive LearningHuman–robot interactionArtificial intelligenceMobile robotMultimedia

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