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Human-robot mutual adaptation in collaborative tasks: Models and experiments

Stefanos Nikolaidis, David Hsu, Siddhartha S Srinivasa

Year
2017
Citations
191

Abstract

Adaptation is critical for effective team collaboration. This paper introduces a computational formalism for mutual adaptation between a robot and a human in collaborative tasks. We propose the Bounded-Memory Adaptation Model, which is a probabilistic finite-state controller that captures human adaptive behaviors under a bounded-memory assumption. We integrate the Bounded-Memory Adaptation Model into a probabilistic decision process, enabling the robot to guide adaptable participants towards a better way of completing the task. Human subject experiments suggest that the proposed formalism improves the effectiveness of human-robot teams in collaborative tasks, when compared with one-way adaptations of the robot to the human, while maintaining the human's trust in the robot.

Keywords

RobotComputer scienceProbabilistic logicHuman–robot interactionAdaptation (eye)Bounded functionFormalism (music)Artificial intelligenceHuman–computer interactionPsychology

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