Investigating the Effects of Robot Engagement Communication on Learning from Demonstration
May 03, 2020 Β· Declared Dead Β· π International Journal of Social Robotics
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Authors
Mingfei Sun, Zhenhui Peng, Meng Xia, Xiaojuan Ma
arXiv ID
2005.01020
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.RO
Citations
2
Venue
International Journal of Social Robotics
Last Checked
4 months ago
Abstract
Robot Learning from Demonstration (RLfD) is a technique for robots to derive policies from instructors' examples. Although the reciprocal effects of student engagement on teacher behavior are widely recognized in the educational community, it is unclear whether the same phenomenon holds true for RLfD. To fill this gap, we first design three types of robot engagement behavior (attention, imitation, and a hybrid of the two) based on the learning literature. We then conduct, in a simulation environment, a within-subject user study to investigate the impact of different robot engagement cues on humans compared to a "without-engagement" condition. Results suggest that engagement communication significantly changes the human's estimation of the robots' capability and significantly raises their expectation towards the learning outcomes, even though we do not run actual learning algorithms in the experiments. Moreover, imitation behavior affects humans more than attention does in all metrics, while their combination has the most profound influences on humans. We also find that communicating engagement via imitation or the combined behavior significantly improve humans' perception towards the quality of demonstrations, even if all demonstrations are of the same quality.
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