Robot Analytics: What Do Human-Robot Interaction Traces Tell Us About Learning?

Jauwairia Nasir, Utku Norman, W. Johal, Jennifer K. Olsen, Sina Shahmoradi, P. Dillenbourg
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引用次数: 12

Abstract

In this paper, we propose that the data generated by educational robots can be better used by applying learning analytics methods and techniques which can lead to a deeper understanding of the learners’ apprehension and behavior as well as refined guidelines for roboticists and improved interventions by the teachers. As a step towards this, we put forward analyzing behavior and task performance at team and/or individual levels by coupling robot data with the data from conventional methods of assessment through quizzes. Classifying learners/teams in the behavioral feature space with respect to the task performance gives insight into the behavior patterns relevant for high performance, which could be backed by feature ranking. As a use case, we present an open-ended learning activity using tangible haptic-enabled Cellulo robots in a classroom-level setting. The pilot study, spanning over approximately an hour, is conducted with 25 children in teams of two that are aged between 11-12. A linear separation is observed between the high and low performing teams where two of the behavioral features, namely number of distinct attempts and the visits to the destination, are found to be important. Although the pilot study in its current form has limitations, e.g. its low sample size, it contributes to highlighting the potential of the use of learning analytics in educational robotics.
机器人分析:人机交互轨迹告诉我们关于学习的什么?
在本文中,我们提出,通过应用学习分析方法和技术,可以更好地利用教育机器人产生的数据,从而更深入地了解学习者的理解和行为,并为机器人专家提供完善的指导方针,并改进教师的干预措施。为了实现这一目标,我们提出通过将机器人数据与传统的测验评估方法的数据相结合,来分析团队和/或个人层面的行为和任务绩效。根据任务性能在行为特征空间中对学习者/团队进行分类,可以深入了解与高性能相关的行为模式,这可以通过特征排名来支持。作为一个用例,我们提出了一个开放式的学习活动,在课堂水平的设置中使用有形的触觉启用Cellulo机器人。这项试点研究持续了大约一个小时,由25名年龄在11-12岁之间的儿童分成两组进行。在高绩效和低绩效团队之间观察到线性分离,其中两个行为特征,即不同尝试的次数和访问目的地的次数,被发现是重要的。尽管目前形式的试点研究存在局限性,例如样本量低,但它有助于突出学习分析在教育机器人中使用的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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