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Human-Robot Co-Learning for Fluent Collaborations

Emma M. van Zoelen, Karel Van den Bosch, Mark A. Neerincx

发表年份
2021
引用次数
6

摘要

A team develops competency by progressive mutual adaptation and learning, a process we call co-learning. In human teams, partners naturally adapt to each other and learn while collaborating. This is not self-evident in human-robot teams. There is a need for methods and models for describing and enabling co-learning in human-robot partnerships. The presented project aims to study human-robot co-learning as a process that stimulates fluent collaborations. First, it is studied how interactions develop in a context where a human and a robot both have to implicitly adapt to each other and have to learn a task to improve the collaboration and performance. The observed interaction patterns and learning outcomes will be used to (1) investigate how to design learning interactions that support human-robot teams to sustain implicitly learned behavior over time and context, and (2) to develop a mental model of the learning human partner, to investigate whether this supports the robot in its own learning as well as in adapting effectively to the human partner.

关键词

Human–robot interactionRobot learningRobotContext (archaeology)Computer scienceAdaptation (eye)Process (computing)Human–computer interactionTask (project management)Knowledge management

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