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Learning Pulse: Using Wearable Biosensors and Learning Analytics to Investigate and Predict Learning Success in Self-regulated Learning

机译:学习脉搏:使用可穿戴生物传感器和学习分析技术调查和预测自我调节学习中的学习成功

摘要

The Learning Pulse study aims to explore whether physiological data such as heart rate and step count correlate with learning activity data and whether they are good predictors for learning success during self-regulated learning. To verify this hypothesis an experiment was set up involving eight doctoral students at the Open University of the Netherlands. Through wearable sensors, heart rate and step count were constantly monitored and learning activity data were collected. All data were stored in a Learning Record Store in xAPI format. Additionally, with an Activity Rating Tool, the participants rated their learning and working experience by indicating the perceived levels of productivity, stress, challenge and abilities along with the type of activity. These human annotated labels can be used for supervising machine learning algorithms to discriminate the successful learning moments from the unsuccessful ones and eventually discover the attributes that most influence the learning process.
机译:学习脉搏研究旨在探讨诸如心律和步数之类的生理数据是否与学习活动数据相关,以及它们是否是自我调节学习期间学习成功的良好预测指标。为了验证这一假设,在荷兰公开大学建立了一个由八名博士生组成的实验。通过可穿戴式传感器,可以持续监控心率和步数,并收集学习活动数据。所有数据都以xAPI格式存储在Learning Record Store中。此外,通过活动评分工具,参与者可以通过指出所感知的生产力,压力,挑战和能力水平以及活动类型来评估他们的学习和工作经验。这些带有人工注释的标签可用于监督机器学习算法,以区分成功学习时刻和失败学习时刻,并最终发现对学习过程影响最大的属性。

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