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Dual Path Convolutional Neural Network for Student Performance Prediction

机译:学生绩效预测的双路卷积神经网络

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Student performance prediction is of great importance to many educational domains, such as academic early warning and personalized teaching, and has drawn numerous research attention in recent decades. Most of the previous studies are based on students' historical course grades, demographical data, in-class study performance, and online activities from e-learning platforms, e.g., Massive Open Online Courses (MOOCs). Thanks to the widely used of campus smartcard, it supplies an opportunity to predict students' academic performance with their off-line behavioral data. In this study, we seek to capture three student behavioral characters, including duration, variation and periodicity, and predict students' performance based on the three types of information. However, it is highly challenging to extract efficient features manually from the huge amount of raw smartcard records. Besides, it is not trivial to construct a good predictive model for some majors with limited student samples. To address the above issues, we develop a novel end-to-end deep learning method and propose Dual Path Convolutional Neural Network (DPCNN) for student performance prediction. Moreover, we introduce multi-task learning to our method and predict the performance of students from different majors in a unified framework. Experimental results demonstrate the superiority of our approach over the state-of-the-art methods.
机译:学生表现预测对许多教育领域具有重要意义,例如学术预警和个性化教学,并且近几十年来吸引了众多研究关注。以前的大多数研究是基于学生的历史课程成绩,人口统计数据,课堂上的学习绩效以及来自电子学习平台的在线活动,例如,大规模开放的在线课程(Moocs)。由于广泛使用的校园智能卡,它提供了预测学生与离线行为数据的学术表现的机会。在这项研究中,我们寻求捕获三个学生的行为人物,包括持续时间,变化和周期,并根据三种类型的信息预测学生的性能。但是,从大量的原始智能卡记录手动提取有效的功能是非常具有挑战性的。此外,为有限的学生样本构建一些专业的良好预测模型并不重要。为解决上述问题,我们开发了一种新的端到端深度学习方法,提出了用于学生性能预测的双路径卷积神经网络(DPCNN)。此外,我们向我们的方法引入多项任务学习,并预测统一框架中不同专业学生的表现。实验结果表明了我们对最先进的方法的方法的优越性。

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