Back to the blocks world: Learning new actions through situated human-robot dialogue

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Abstract

This paper describes an approach for a robotic arm to learn new actions through dialogue in a simplified blocks world. In particular, we have developed a threetier action knowledge representation that on one hand, supports the connection between symbolic representations of language and continuous sensorimotor representations of the robot; and on the other hand, supports the application of existing planning algorithms to address novel situations. Our empirical studies have shown that, based on this representation the robot was able to learn and execute basic actions in the blocks world. When a human is engaged in a dialogue to teach the robot new actions, step-by-step instructions lead to better learning performance compared to one-shot instructions.

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APA

She, L., Yang, S., Cheng, Y., Jia, Y., Chai, J. Y., & Xi, N. (2014). Back to the blocks world: Learning new actions through situated human-robot dialogue. In SIGDIAL 2014 - 15th Annual Meeting of the Special Interest Group on Discourse and Dialogue, Proceedings of the Conference (pp. 89–97). Association for Computational Linguistics (ACL). https://doi.org/10.3115/v1/w14-4313

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