基于长期和短期数据的学生成绩波动预测

Zhang Tao, Yihua Xu, Peng Qi, Xin Li, Guoping Hu
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引用次数: 1

摘要

学生学业成绩预测的潜在价值已被教育机构广泛研究。然而,它仍然存在很大的研究挑战,例如学生行为与学习成绩之间的关系。本文重用在线教育平台的数据,采用四种方法分析教育价值与学业成绩波动的关系。该方法基于阶跃回归、逻辑回归、决策树和支持向量机回归(SVMR)。最后,通过比较四种模型的预测精度,选择svm模型。实验结果表明,传统的认知表现与预测之间存在一定的差异,并且可以由数据驱动教育决策。
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Predicting the Performance Fluctuation of Students Based on the Long-Term and Short-Term Data
The potential value of students' academic performance prediction has been extensively studied by educational institutions. However, it still has great research challenges, such as the relationship between students' behavior and their academic performance. This paper reused data from online educational platforms, and used four methods to analyze educational value in relation to the fluctuations of academic performance. The methods are based on Step Regression, Logistic Regression, Decision Tree and Support Vector Machine Regression (SVMR). At last, SVMR model is selected by comparing the prediction accuracy of the four models. The experimental results show that there are some differences between traditional cognitive performance and prediction and that educational decisions can be driven by the data.
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