How Do We Perceive Our Trainee Robots? Exploring the Impact of Robot Errors and Appearance When Performing Domestic Physical Tasks on Teachers’ Trust and Evaluations

Author:

Aliasghari Pourya1ORCID,Ghafurian Moojan1ORCID,Nehaniv Chrystopher L.1ORCID,Dautenhahn Kerstin1ORCID

Affiliation:

1. Social and Intelligent Robotics Research Laboratory, Faculty of Engineering, University of Waterloo, Waterloo, Ontario, Canada

Abstract

To be successful, robots that can learn new tasks from humans should interact effectively with them while being trained, and humans should be able to trust the robots’ abilities after teaching. Typically, when human learners make mistakes, their teachers tolerate those errors, especially when students exhibit acceptable progress overall. But how do errors and appearance of a trainee robot affect human teachers’ trust while the robot is generally improving in performing a task? First, an online survey with 173 participants investigated perceived severity of robot errors in performing a cooking task. These findings were then used in an interactive online experiment with 138 participants, in which the participants were able to remotely teach their food preparation preferences to trainee robots with two different appearances. Compared with an untidy-looking robot, a tidy-looking robot was rated as more professional, without impacting participants’ trust. Furthermore, while larger errors at the end of iterative training had a greater impact, even a small error could significantly reduce trust in a trainee robot performing the domestic physical task of food preparation, regardless of the robot’s appearance. The present study extends human–robot interaction knowledge about teachers’ perception of trainee robots, particularly when teachers observe them accomplishing domestic physical tasks.

Funder

Canada 150 Research Chairs Program

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Human-Computer Interaction

Reference76 articles.

1. Pourya Aliasghari. 2021. Exploring Human Teachers’ Interpretations of Trainee Robots’ Nonverbal Behaviour and Errors. Master’s thesis. University of Waterloo, Waterloo, Canada. http://hdl.handle.net/10012/16898.

2. Pourya Aliasghari, Moojan Ghafurian, Chrystopher L. Nehaniv, and Kerstin Dautenhahn. 2021. Effect of domestic trainee robots’ errors on human teachers’ trust. In 30th IEEE International Conference on Robot Human Interactive Communication (RO-MAN’21). IEEE, Vancouver, BC, 81–88. DOI:10.1109/RO-MAN50785.2021.9515510

3. Pourya Aliasghari, Moojan Ghafurian, Chrystopher L. Nehaniv, and Kerstin Dautenhahn. 2021. Effects of gaze and arm motion kinesics on a Humanoid’s perceived confidence, eagerness to learn, and attention to the task in a teaching scenario. In Proceedings of the 2021 ACM/IEEE International Conference on Human-Robot Interaction (HRI’21). ACM, Boulder, CO, 197–206. DOI:10.1145/3434073.3444651

4. Impact of nonverbal robot behaviour on human teachers’ perceptions of a learner robot

5. Comparing the Similarity of Responses Received from Studies in Amazon’s Mechanical Turk to Studies Conducted Online and with Direct Recruitment

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