Rethinking Pedagogical Use of Eye Trackers for Visual Problems with Eye Gaze Interpretation Tasks

David John, Ritayan Mitra
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Abstract

Eye tracking technology enables the visualisation of a problem solver's eye movement while working on a problem. The eye movement of experts has been used to draw attention to expert problem solving processes in a bid to teach procedural skills to learners. Such affordances appear as eye movement modelling examples (EMME) in the literature. This work intends to further this line of work by suggesting how eye gaze data can not only guide attention but also scaffold learning through constructive engagement with the problem solving process of another human. Inferring the models’ problem solving process, be it that of an expert or novice, from their eye gaze display would require a learner to make interpretations that are rooted in the knowledge elements relevant to such problem solving. Such tasks, if designed properly, are expected to probe or foster a deeper understanding of a topic as their solutions would require not only following the expert gaze to learn a particular skill, but also interpreting the solution process as evident from the gaze pattern of an expert or even of a novice. This position paper presents a case for such tasks, which we call eye gaze interpretation (EGI) tasks. We start with the theoretical background of these tasks, followed by a conceptual example and representation to elucidate the concept of EGI tasks. Thereafter, we discuss design considerations and pedagogical affordances, using a domain-specific (chemistry) spectral graph problem. Finally, we explore the possibilities and constraints of EGI tasks in various fields that require visual representations for problem solving.
重新思考眼动仪在教学中的应用,用眼球注视解读任务来解决视觉问题
眼动跟踪技术可以将问题解决者在解决问题时的眼动情况可视化。专家的眼动被用来吸引人们对专家解决问题过程的关注,从而向学习者传授程序性技能。在文献中,这种能力被称为眼动建模实例(EMME)。这项工作旨在进一步推进这一工作,提出眼球注视数据如何不仅能引导注意力,还能通过建设性地参与他人的问题解决过程来促进学习。通过眼球注视显示来推断模型的问题解决过程,无论是专家还是新手,都需要学习者根据与问题解决相关的知识要素来进行解释。如果设计得当,此类任务有望探究或促进对某一主题的深入理解,因为其解决方案不仅需要跟随专家的目光学习特定技能,还需要解释从专家甚至新手的目光模式中可以看出的解决方案过程。本立场文件介绍了此类任务的案例,我们称之为眼球注视解读(EGI)任务。我们首先介绍了这些任务的理论背景,然后通过一个概念性示例和表述来阐明 EGI 任务的概念。之后,我们利用一个特定领域(化学)的光谱图问题,讨论了设计考虑因素和教学能力。最后,我们探讨了电子地理信息任务在需要视觉表征解决问题的各个领域中的可能性和制约因素。
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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来源期刊
Frontline Learning Research
Frontline Learning Research Social Sciences-Education
CiteScore
5.50
自引率
0.00%
发文量
6
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