Enhanced CNN Models for Binary and Multiclass Student Classification on Temporal Educational Data at the Program Level

Vo Thi Ngoc Chau, N. H. Phung
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引用次数: 1

Abstract

In educational data mining, student classification is an important and popular task by predicting final study status of each student. In the existing works, this task has been considered in many various contexts at both course and program levels with different learning approaches. However, its real-world characteristics such as temporal aspects, data imbalance, data overlapping, and data shortage with sparseness have not yet been fully investigated. Making the most of deep learning, our work is the first one addressing those challenges for the program-level student classification task. In a simple but effective manner, convolutional neural networks (CNNs) are proposed to exploit their well-known advantages on images for temporal educational data. As a result, the task is resolved by our enhanced CNN models with more effectiveness and practicability on real datasets. Our CNN models outperform other traditional models and their various variants on a consistent basis for program-level student classification.
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增强的CNN模型在课程水平上对时态教育数据进行二值和多类学生分类
在教育数据挖掘中,学生分类是一项重要而流行的任务,通过预测每个学生的最终学习状态。在现有的工作中,这项任务已经在许多不同的背景下被考虑在不同的学习方法的课程和项目水平。然而,其现实特征,如时间方面、数据不平衡、数据重叠、数据稀疏性不足等尚未得到充分研究。通过充分利用深度学习,我们的工作是第一个解决这些挑战的项目级学生分类任务。以一种简单而有效的方式,提出卷积神经网络(cnn)利用其在图像上众所周知的优势来处理时序教育数据。因此,我们的增强CNN模型在真实数据集上具有更高的有效性和实用性。我们的CNN模型在项目级学生分类的一致基础上优于其他传统模型及其各种变体。
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