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Eye-tracking and artificial intelligence to enhance motivation and learning

机译:追踪和人工智能提高动力和学习

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The interaction with the various learners in a Massive Open Online Course (MOOC) is often complex. Contemporary MOOC learning analytics relate with click-streams, keystrokes and other user-input variables. Such variables however, do not always capture users’ learning and behavior (e.g., passive video watching). In this paper, we present a study with 40 students who watched a MOOC lecture while their eye-movements were being recorded. We then proposed a method to define stimuli-based gaze variables that can be used for any kind of stimulus. The proposed stimuli-based gaze variables indicate students’ content-coverage (in space and time) and reading processes (area of interest based variables) and attention (i.e., with-me-ness), at the perceptual (following teacher’s deictic acts) and conceptual levels (following teacher discourse). In our experiment, we identified a significant mediation effect of the content coverage, reading patterns and the two levels of with-me-ness on the relation between students’ motivation and their learning performance. Such variables enable common measurements for the different kind of stimuli present in distinct MOOCs. Our long-term goal is to create student profiles based on their performance and learning strategy using stimuli-based gaze variables and to provide students gaze-aware feedback to improve overall learning process. One key ingredient in the process of achieving a high level of adaptation in providing gaze-aware feedback to the students is to use Artificial Intelligence (AI) algorithms for prediction of student performance from their behaviour. In this contribution, we also present a method combining state-of-the-art AI technique with the eye-tracking data to predict student performance. The results show that the student performance can be predicted with an error of less than 5%.
机译:与大规模开放在线课程(MOOC)的各种学习者的互动往往是复杂的。当代MOOC学习分析与点击流,击键和其他用户输入变量相关。然而,这种变量并不总是捕获用户的学习和行为(例如,被动视频观看)。在本文中,我们提出了一项关于40名学生的研究,同时记录了他们的注意力讲座。然后,我们提出了一种方法来定义基于刺激的凝视变量,可用于任何类型的刺激。所提出的刺激的凝视变量表明学生的内容 - 覆盖(在空间和时间)和阅读过程(基于利益区域的变量)和注意力(即,与ME-NESS),在感知性(在教师的解释行为之后)和概念层面(遵循教师话语)。在我们的实验中,我们确定了内容覆盖率,阅读模式和与ME-NES的两级关于学生动机与学习表现的关系的重要调解效果。这种变量能够为不同的MOOCS中存在的不同类型的刺激进行常见测量。我们的长期目标是根据他们的绩效和学习策略使用基于刺激的凝视变量来创建学生资料,并为学生提供凝视感知的反馈来改善整体学习过程。在为学生提供凝视感知反馈的过程中实现高水平适应的过程中的一个关键成分是使用人工智能(AI)算法来预测来自其行为的学生表现。在这一贡献中,我们还提出了一种将最先进的AI技术与眼睛跟踪数据相结合以预测学生性能的方法。结果表明,可以预测学生表现,误差小于5%。

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