A growing number of universities worldwide use various forms of online and blended learning as part of their academic curricula. Furthermore, the recent changes caused by the COVID-19 pandemic have led to a drastic increase in importance and ubiquity of online education. Among the major advantages of e-learning is not only improving students' learning experience and widening their educational prospects, but also an opportunity to gain insights into students' learning processes with learning analytics. This study contributes to the topic of improving and understanding e-learning processes in the following ways. First, we demonstrate that accurate predictive models can be built based on sequential patterns derived from students' behavioral data, which are able to identify underperforming students early in the course. Second, we investigate the specificity-generalizability trade-off in building such predictive models by investigating whether predictive models should be built for every course individually based on course-specific sequential patterns, or across several courses based on more general behavioral patterns. Finally, we present a methodology for capturing temporal aspects in behavioral data and analyze its influence on the predictive performance of the models. The results of our improved sequence classification technique are capable to predict student performance with high levels of accuracy, reaching 90 percent for course-specific models.
翻译:此外,最近COVID-19大流行引起的变化导致在线教育的重要性和普遍性急剧增加。电子学习的主要好处不仅在于改善学生的学习经验,扩大他们的教育前景,而且还是了解学生学习过程的机会,通过学习分析分析来了解学生的学习过程。本研究以下列方式促进改进和理解电子学习过程的主题。首先,我们证明准确的预测模型可以建立在学生行为数据得出的连续模式基础上,这些数据能够在课程早期发现成绩不佳的学生。第二,我们调查电子学习的主要好处不仅是改善学生的学习经验和扩大其教育前景,而且还提供了一个了解学生学习过程的机会。本研究有助于以下列方式改进和理解电子学习过程。我们介绍了一种方法,用以从行为数据中收集时间方面,分析其对模型预测性表现的影响。我们改进的序列分类技术的结果是能够以高的准确度预测学生成绩,达到90%的特定课程。