扩大学习分析数据的范围:使用可穿戴技术的注意力和自我调节的初步发现

Catherine A. Spann, James D Schaeffer, George Siemens
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引用次数: 21

摘要

集中注意力和自我调节的能力是所有年龄段学习者都需要的基本技能。迄今为止,学习分析研究人员一直依赖于计算系统(如学习管理系统、点击流或日志数据)生成的数据来检查学习者的自我调节能力。通过健身追踪器、手表、心率监测器和临床级设备(如Empatica的E4腕带),可穿戴计算的发展现在为研究人员提供了在学生与学习内容或软件系统互动时访问生物特征数据的途径。这种级别的数据收集有望为个人的认知和情感体验提供有价值的见解,特别是当与传统的学习分析数据源相结合时。我们的研究详细介绍了使用可穿戴技术来评估心率变异性和个人自我调节能力之间的关系。这与学习分析领域相关,因为方法变得更加复杂,对学习者表现的评估变得更加细致入微,并关注有助于学习者成功的情感因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Expanding the scope of learning analytics data: preliminary findings on attention and self-regulation using wearable technology
The ability to pay attention and self-regulate is a fundamental skill required of learners of all ages. Learning analytics researchers have to date relied on data generated by a computing system (such as a learning management system, click stream or log data) to examine learners' self-regulatory abilities. The development of wearable computing through fitness trackers, watches, heart rate monitors, and clinical grade devices such as Empatica's E4 wristband now provides researchers with access to biometric data as students interact with learning content or software systems. This level of data collection promises to provide valuable insight into cognitive and affective experiences of individuals, especially when combined with traditional learning analytics data sources. Our study details the use of wearable technologies to assess the relationship between heart rate variability and the self-regulatory abilities of an individual. This is relevant for the field of learning analytics as methods become more complex and the assessment of learner performance becomes more nuanced and attentive to the affective factors that contribute to learner success.
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