Heterogeneous Educational Data Classification at the Course Level

P. Nguyen, C. Vo
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Abstract

Nowadays, teaching and learning activities in a course are greatly supported by information technologies. Forums are among information technologies utilized in a course to encourage students to communicate with lecturers more outside a traditional class. Free-styled textual posts in those communications express the problems that the students are facing as well as the interest and activeness of the students with respect to each topic of a course. Exploiting such textual data in a course forum for course-level student prediction is considered in our work. Due to hierarchical structures in course forum texts, we propose a solution in this paper which combines a deep convolutional neural network (CNN) and a loss function to extract the features from textual data in such a manner that more correct recognitions of instances of the minority class which includes students with failure can be supported. In addition, other numeric data are examined and used for the task so that all the students with and without posts can be predicted in the task. Therefore, our work is the first one that defines and solves this prediction task with heterogeneous educational data at the course level as compared to the existing works. In the proposed solution, Random Forests are suggested as an effective ensemble model suitable for our heterogeneous data when many single prediction models which are random trees can be built for many various subspaces with different random features in a supervised learning process. Experimental results in an empirical evaluation on two real datasets show that a heterogeneous combination of textual and numeric data with a Random Forest model can enhance the effectiveness of our solution to the task. The best accuracy and [Formula: see text]-measure values can be obtained for early predictions of the students with either success or failure. Such better predictions can help both students and lecturers beware of students’ study and support them in time for ultimate success in a course.
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课程层面的异构教育数据分类
如今,信息技术在很大程度上支持了课程的教学活动。论坛是课程中使用的信息技术之一,旨在鼓励学生在传统课堂之外更多地与讲师交流。这些交流中的自由式文本帖子表达了学生面临的问题,以及学生对课程每个主题的兴趣和积极性。我们的工作考虑了在课程论坛中利用这些文本数据进行课程水平的学生预测。由于课程论坛文本的层次结构,本文提出了一种结合深度卷积神经网络(CNN)和损失函数的解决方案,从文本数据中提取特征,从而支持对包括失败学生在内的少数班级的实例进行更正确的识别。此外,任务还检查和使用其他数值数据,以便在任务中预测所有有和没有职位的学生。因此,与现有的工作相比,我们的工作是第一个在课程层面上定义和解决这种异构教育数据预测任务的工作。在该解决方案中,随机森林是一种有效的集成模型,适合于我们的异构数据,在监督学习过程中,可以为具有不同随机特征的许多子空间建立许多随机树的单个预测模型。在两个真实数据集上的实验结果表明,文本和数字数据的异构组合与随机森林模型可以提高我们的解决方案的有效性。对于学生的成功或失败的早期预测,可以获得最好的准确性和测量值。这种更好的预测可以帮助学生和老师了解学生的学习情况,并及时支持他们在课程中取得最终成功。
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