The Impact of Robot Tutor Nonverbal Social Behavior on Child Learning

Q1 Computer Science Frontiers in ICT Pub Date : 2017-04-24 DOI:10.3389/fict.2017.00006
James Kennedy, Paul E. Baxter, Tony Belpaeme
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引用次数: 18

Abstract

Several studies have indicated that interacting with social robots in educational contexts may lead to greater learning than interactions with computers or virtual agents. As such, an increasing amount of social human-robot interaction research is being conducted in the learning domain, particularly with children. However, it is unclear precisely what social behaviour a robot should employ in such interactions. Inspiration can be taken from human-human studies; this often leads to an assumption that the more social behaviour an agent utilises, the better the learning outcome will be. We apply a nonverbal behaviour metric to a series of studies in which children are taught how to identify prime numbers by a robot with various behavioural manipulations. We find a trend which generally agrees with the pedagogy literature, but also that overt nonverbal behaviour does not account for all learning differences. We discuss the impact of novelty, child expectations, and responses to social cues to further the understanding of the relationship between robot social behaviour and learning. We suggest that the combination of nonverbal behaviour and social cue congruency is necessary to facilitate learning.
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机器人导师非语言社会行为对儿童学习的影响
几项研究表明,在教育环境中与社交机器人互动可能比与计算机或虚拟代理互动更能促进学习。因此,越来越多的社会人机交互研究正在学习领域进行,特别是与儿童。然而,目前还不清楚机器人在这种互动中应该采取什么样的社会行为。灵感可以从人与人之间的研究中获得;这通常会导致一种假设,即智能体使用的社会行为越多,学习结果就越好。我们将非语言行为度量应用到一系列研究中,在这些研究中,孩子们被一个具有各种行为操纵的机器人教导如何识别素数。我们发现了一种趋势,这与教育学文献普遍一致,但也表明,公开的非语言行为并不能解释所有的学习差异。我们讨论了新颖性、儿童期望和对社会线索的反应的影响,以进一步理解机器人社会行为和学习之间的关系。我们认为,非语言行为和社会线索一致性的结合对于促进学习是必要的。
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Frontiers in ICT
Frontiers in ICT Computer Science-Computer Networks and Communications
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