Building Student Course Performance Prediction Model Based on Deep Learning

IF 0.5 4区 计算机科学 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
J. Kuo, Hao-Ting Chung, Ping-Feng Wang, Baiying Lei
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引用次数: 6

Abstract

The deferral of graduation rate in Taiwan's universities is estimated 16%, which will affect the scheduling of school resources. Therefore, if we can expect to take notice of students' academic performance and provide guidance to students who cannot pass the threshold as expected, the waste of school resources can effectively be reduced. In this research, the recent years' student data and course results are used as training data to construct student performance prediction models. The K-Means algorithm was used to classify all courses from the freshman to the senior. The related courses will be grouped in the same cluster, which will more likely to find similar features and improve the accuracy of the prediction. Then, this study constructs independent neural networks for each course according to the different academic year. Each model will be pre-trained by using Denoising Auto-encoder. After pre-training, the corresponding structure and weights are taken as the initial value of the neural network model. Each neural network is treated as a base predictor. All predictors will be integrated into an Ensemble predictor according to different years' weights to predict the current student's course performance. As the students finish the course at the end of each semester, the prediction model will continue track and update to enhance model accuracy through online learning.
基于深度学习的学生课程成绩预测模型构建
台湾大学的延迟毕业率估计为16%,这将影响学校资源的调度。因此,如果我们能够期望关注学生的学习成绩,并对未达到预期门槛的学生进行指导,就可以有效地减少学校资源的浪费。本研究以近年来的学生数据和课程成绩作为训练数据,构建学生成绩预测模型。使用K-Means算法对从大一到大四的所有课程进行分类。将相关的课程分组在同一个聚类中,这样更容易发现相似的特征,提高预测的准确性。然后,本研究根据不同的学年为每门课程构建独立的神经网络。每个模型将使用去噪自编码器进行预训练。预训练后,取相应的结构和权值作为神经网络模型的初始值。每个神经网络都被视为一个基本预测器。所有预测因子将根据不同年份的权重整合到一个集成预测因子中,以预测当前学生的课程表现。随着学生在每学期期末完成课程,预测模型将继续跟踪和更新,通过在线学习提高模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Information Science and Engineering
Journal of Information Science and Engineering 工程技术-计算机:信息系统
CiteScore
2.00
自引率
0.00%
发文量
4
审稿时长
8 months
期刊介绍: The Journal of Information Science and Engineering is dedicated to the dissemination of information on computer science, computer engineering, and computer systems. This journal encourages articles on original research in the areas of computer hardware, software, man-machine interface, theory and applications. tutorial papers in the above-mentioned areas, and state-of-the-art papers on various aspects of computer systems and applications.
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