Predictive Monitoring of Learning Processes

G. Thiyagarajan, P. S
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Abstract

What students do in a self-paced online learning environment is a "black box". The instructor has limited interactions with students and a restricted understanding of how students are progressing in their studies. A technology, sophisticated enough to predict the outcome of the student in an online learning environment was widely adopted in Predictive Learning Analytics. In the past, research on predictive learning analytics has emphasized predicting learning outcomes rather than facilitating instructors and students in decision-making or analyzing student behavior. This research study employed a predictive process monitoring technique to analyze the student’s event logs in an online learning and online test environment to predict the next activity the student is going to perform and the remaining time to complete the course or test. The Long Short Term Memory neural network approach is used in this work to predict the next activity of the running case by analyzing the sequence of historical data and Apromore to predict the completion time of a case. By employing the predictive monitoring of learning processes, new insights are developed to analyze students’ behavior in real-time and is achievable.
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学习过程的预测监测
学生在自定进度的在线学习环境中所做的事情是一个“黑匣子”。教师与学生的互动有限,对学生学习进展的了解也有限。预测学习分析(Predictive learning Analytics)广泛采用了一种足够复杂的技术,可以预测学生在在线学习环境中的学习结果。在过去,预测学习分析的研究侧重于预测学习结果,而不是促进教师和学生决策或分析学生行为。本研究采用了一种预测过程监控技术,在在线学习和在线测试环境中分析学生的事件日志,以预测学生将要执行的下一个活动以及完成课程或测试的剩余时间。本研究采用长短期记忆神经网络方法,通过分析历史数据序列和Apromore预测案例完成时间,预测运行案例的下一个活动。通过对学习过程的预测监测,可以开发出新的见解来实时分析学生的行为,并且是可以实现的。
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