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Using Data Mining and Machine Learning Approaches to Observe Technology-Enhanced Learning

机译:使用数据挖掘和机器学习方法来观察技术增强的学习

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Understanding technology-enhanced learning (TEL) in schools continues to be difficult. A key reason is the complexity of digital technology use in the classroom to support learning. One of the reasons for this is the difficulty observing classrooms for extended periods of time to capture learning and the relevance to teacher's practice. This paper demonstrates how new technologies, data mining and machine learning approaches can be employed to explore the natural TEL classroom over time and meaningfully visualize results for teachers. To do this, a low-disturbance classroom observation kit is used to collect data in a secondary Science classroom for two months. One learning topic is identified, multimodal data are analysed and presented to the teacher for reflection. Three audio patterns relating to classroom activities and two teacher behaviours are identified, which bear relation to pedagogy, digital technology use and teaching strategies. Implications future research are discussed.
机译:了解技术增强的学习(电话)在学校继续困难。一个关键原因是数字技术在课堂上使用的复杂性以支持学习。其中一个原因是难以观察教室,长时间捕捉学习和与教师惯例的相关性。本文展示了新技术,数据挖掘和机器学习方法如何随着时间的推移探索天然的电话教室,并有意义地对老师进行结果。为此,低扰动的课堂观测套件用于收集二级科学课堂中的数据两个月。识别一个学习主题,分析多模式数据并向教师呈现反射。有三种与课堂活动有关的音频模式和两个教师行为,其与教育学,数字技术使用和教学策略有关。讨论了未来研究的影响。

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