应用数学和机器学习技术来分析眼球追踪数据,从而更好地理解儿童的视觉认知行为

Enrique Garcia Moreno-Esteva, S. White, J. Wood, A. Black
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引用次数: 9

摘要

在本研究中,我们旨在调查106名三年级(8.8±0.3岁)儿童在完成数学条形图任务时的视觉认知行为。当孩子们完成任务时,他们的眼球运动被记录下来,并用机器学习方法探索眼球运动的模式。我们使用了两种不同的机器学习技术(贝叶斯和K-Means)来为那些对图形任务做出正确和错误反应的孩子获得单独的模型序列或平均扫描路径。这些机器学习方法的应用表明,正确或错误完成图形任务的儿童的扫描路径存在明显差异:正确回答的儿童访问了大部分被归类为关键的信息,而错误回答的儿童则没有。还有证据表明,与错误的孩子相比,正确的孩子以一种不同的、更合乎逻辑的顺序访问图形信息。视觉行为与图形理解的不同方面相一致,例如最初的理解和对图形的定位,以及后来对图形相关信息的解释和使用。研究结果讨论了对早期数学教学的影响,特别是在图形理解的发展方面,以及机器学习技术在其他视觉认知行为调查中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of mathematical and machine learning techniques to analyse eye-tracking data enabling better understanding of children’s visual-cognitive behaviours
In this research, we aimed to investigate the visual-cognitive behaviours of a sample of 106 children in Year 3 (8.8 ± 0.3 years) while completing a mathematics bar-graph task. Eye movements were recorded while children completed the task and the patterns of eye movements explored using machine learning approaches. Two different techniques of machine-learning were used (Bayesian and K-Means) to obtain separate model sequences or average scan-paths for those children who responded either correctly and incorrectly to the graph task. Application of these machine-learning approaches indicated distinct differences in the resulting scan-paths for children who completed the graph task correctly or incorrectly: children who responded correctly accessed information that was mostly categorised as critical, whereas children responding incorrectly did not. There was also evidence that the children who were correct accessed the graph information in a different, more logical order, compared to the children who were incorrect. The visual behaviours aligned with different aspects of graph comprehension, such as initial understanding and orienting to the graph, and later interpretation and use of relevant information on the graph. The findings are discussed in terms of the implications for early mathematics teaching and learning, particularly in the development of graph comprehension, as well as the application of machine learning techniques to investigations of other visual-cognitive behaviours.
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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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