Abstract:
Prior work in affect-aware educational robots has often relied on a common belief that the relationship between student affect and learning is independent of agent behavi...Show MoreMetadata
Abstract:
Prior work in affect-aware educational robots has often relied on a common belief that the relationship between student affect and learning is independent of agent behaviors (child’s/robot’s) or unidirectional (positive/negative but not both) throughout the entire student-robot interaction. We argue that the student affect-learning relationship should be interpreted in two contexts: (1) social learning paradigm and (2) sub-events within child-robot interaction. In our paper, we examine two different social learning paradigms where children interact with a robot that acts either as a tutor or a tutee. Sub-events within child-robot interaction are defined as task-related events occurring in specific phases of an interaction (e.g., when the child/robot gets a wrong answer). We examine sub-events at a macro level (entire interaction) and a micro level (within specific sub-events). In this paper, we provide an in-depth correlation analysis of children’s facial affect and vocabulary learning. We found that children’s affective displays became more predictive of their vocabulary learning when children interacted with a tutee robot who did not scaffold their learning. Additionally, children’s affect displayed during micro-level events was more predictive of their learning than during macro-level events. Last, we found that the affect-learning relationship is not unidirectional, but rather is modulated by context, i.e., several affective states facilitated student learning when displayed in some sub-events but inhibited learning when displayed in others. These findings indicate that both social learning paradigm and sub-events within interaction modulate student affect-learning relationship. ACM Reference Format: Huili Chen, Hae Won Park, Xiajie Zhang, and Cynthia Breazeal. 2020. Impact of Interaction Context on the Student Affect-Learning Relationship in Child-Robot Interaction. In Proceedings of the 2020 ACM/IEEE International Conference on Human-Robot Interaction (HRI ’20...
Date of Conference: 23-26 March 2020
Date Added to IEEE Xplore: 21 July 2021
Electronic ISBN:978-1-4503-6746-2
ISSN Information:
Conference Location: Cambridge, United Kingdom