教学分析:使用可穿戴传感器自动提取编排图

L. Prieto, K. Sharma, P. Dillenbourg, M. Rodríguez-Triana
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引用次数: 90

摘要

“教学分析”是学习分析技术的应用,用于理解教学和学习过程,并最终实现支持性干预。然而,在面对面课堂(通常是半即兴的)教学的情况下,这种干预首先需要了解教师实际做了什么,作为教师反思和探究的起点。目前,这种教师行为表征需要研究人员进行昂贵的手工编码。本文提出了一个案例研究,探索机器学习技术在课堂制定过程中自动提取教学动作的潜力,从使用可穿戴传感器(眼动追踪、脑电图、加速度计、音频和视频)收集的五个数据源中提取教学动作。我们的结果强调了这种方法的可行性,在确定互动的社会平面方面具有很高的准确性(90%,κ=0.8)。准确可靠地检测具体的教学活动(例如,解释与提问)仍然具有挑战性(67%,κ=0.56),这一事实将促使对教学活动提取的多模态特征和模型的进一步研究,以及收集更大的多模态数据集,以提高这些方法的准确性和泛化性。
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Teaching analytics: towards automatic extraction of orchestration graphs using wearable sensors
'Teaching analytics' is the application of learning analytics techniques to understand teaching and learning processes, and eventually enable supportive interventions. However, in the case of (often, half-improvised) teaching in face-to-face classrooms, such interventions would require first an understanding of what the teacher actually did, as the starting point for teacher reflection and inquiry. Currently, such teacher enactment characterization requires costly manual coding by researchers. This paper presents a case study exploring the potential of machine learning techniques to automatically extract teaching actions during classroom enactment, from five data sources collected using wearable sensors (eye-tracking, EEG, accelerometer, audio and video). Our results highlight the feasibility of this approach, with high levels of accuracy in determining the social plane of interaction (90%, κ=0.8). The reliable detection of concrete teaching activity (e.g., explanation vs. questioning) accurately still remains challenging (67%, κ=0.56), a fact that will prompt further research on multimodal features and models for teaching activity extraction, as well as the collection of a larger multimodal dataset to improve the accuracy and generalizability of these methods.
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