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Comparative Study of Prediction Models on High School Student Performance in Mathematics

机译:高中生数学成绩预测模型的比较研究

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摘要

Measuring students performance is a challenging task that can help students and teachers to keep track of progress of students performance. Mathematics is one of the basic pillars for many subjects, as well as the backbone of scientific undertaking in the age of information revolution. In order to improve the predicting results, several techniques have been investigated and compared to get the optimized prediction model. In this paper, we proposed comparative study of a statistical analysis techniques, machines learning (ML) algorithms, and one of deep learning architecture for predicting student performance in mathematics. A statistical technique structural equation modeling (SEM), five classes of machine learning algorithms, and a framework of deep learning, Deep Belief Network (DBN) were executed and compared. Two datasets namely, DS1, and DS2 of the same characteristics with different sizes were used. Through the three datasets, Random Forest (RF) was found to outperform others models in prediction the student performance.
机译:衡量学生的表现是一项具有挑战性的任务,可以帮助学生和老师跟踪学生的学习进度。数学是许多学科的基本支柱之一,也是信息革命时代科学事业的支柱。为了改善预测结果,已经研究和比较了几种技术以获得最佳的预测模型。在本文中,我们提出了对统计分析技术,机器学习(ML)算法以及用于预测学生在数学中表现的深度学习架构之一的比较研究。执行并比较了统计技术的结构方程模型(SEM),五类机器学习算法以及深度学习框架深度信念网络(DBN)。使用两个具有相同特征但大小不同的数据集DS1和DS2。通过这三个数据集,发现随机森林(RF)在预测学生表现方面优于其他模型。

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