预测学生的脱离:利用视觉线索的智能辅导系统

None Mehmet Firat
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摘要

智能辅导系统有可能提高儿童的学习体验,但发现和解决脱离参与的早期迹象对于确保有效学习至关重要。在本文中,我们提出了一种方法,利用平板电脑导师的面向用户的摄像头的视觉特征来预测学生是否会完成当前的活动或脱离它。与之前依赖于导师特定特征的方法不同,我们的方法利用了视觉线索,使其适用于各种辅导系统。我们采用了一种基于长短期记忆(LSTM)模型的深度学习方法,该模型具有目标复制损失函数进行预测。我们的模型是在坦桑尼亚儿童使用平板电脑导师学习基本斯瓦希里语识字和算术的屏幕截图视频上进行训练和测试的。在剩余40%的活动情况下,我们的模型实现了73.3%的平衡类大小预测精度。此外,我们分析了不同导师活动在预测准确性上的变化,揭示了两种不同的脱离原因。研究结果表明,我们的模型不仅可以预测脱离投入,还可以识别可能不会导致不完成任务的负面情感状态的视觉指标。这项工作有助于自动发现脱离接触的早期迹象,这有助于改进辅导系统并实时指导教学决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting student disengagement: Harnessing visual cues for intelligent tutoring systems
Intelligent tutoring systems have the potential to enhance the learning experience for children, but it is crucial to detect and address early signs of disengagement to ensure effective learning. In this paper, we propose a method that utilizes visual features from a tablet tutor's user-facing camera to predict whether a student will complete the current activity or disengage from it. Unlike previous approaches that relied on tutor-specific features, our method leverages visual cues, making it applicable to various tutoring systems. We employ a deep learning approach based on a Long Short Term Memory (LSTM) model with a target replication loss function for prediction. Our model is trained and tested on screen capture videos of children using a tablet tutor for learning basic Swahili literacy and numeracy in Tanzania. With 40% of the activity remaining, our model achieves a balanced-class size prediction accuracy of 73.3%. Furthermore, we analyze the variation in prediction accuracy across different tutor activities, revealing two distinct causes of disengagement. The findings indicate that our model can not only predict disengagement but also identify visual indicators of negative affective states that may not lead to non-completion of the task. This work contributes to the automated detection of early signs of disengagement, which can aid in improving tutoring systems and guiding pedagogical decisions in real-time.
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