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Improving Student Academic Performance Prediction Models using Feature Selection

机译:使用特征选择改善学生的学业成绩预测模型

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This paper presents methods to improve the prediction of student academic performance using feature selection by removing misclassified instances and Synthetic Minority Over-Sampling Technique. It compares the performance of seven students’ academic performance prediction models, namely Naïve Bayes, Sequential Minimum Optimization, Artificial Neural Network, k-Nearest Neighbor, REPTree, Partial decision trees, and Random Forest. The data were collected from 9,458 students at the Rajabhat Maha Sarakham University, Thailand during 2015 - 2018. The model performances were evaluated with precision, recall, and F-measure. The experimental results indicated that the Random Forest approach significantly improves the performance of students’ academic performance prediction models with precision up to 41.70%, recall up to 41.40% and F-measure up to 41.60%, respectively.
机译:本文提出了一些方法,可以通过使用特征选择来消除对错误分类的实例和综合少数群体过采样技术,从而提高对学生学习成绩的预测。它比较了七个学生的学业成绩预测模型的表现,即朴素贝叶斯,顺序最小优化,人工神经网络,k最近邻,REPTree,部分决策树和随机森林。数据收集自2015年至2018年泰国拉贾拜玛哈沙拉堪大学(Rajabhat Maha Sarakham University)的9,458名学生。模型的性能经过精密度,召回率和F量度评估。实验结果表明,随机森林方法显着提高了学生的学业成绩预测模型的绩效,其准确率分别高达41.70%,召回率高达41.40%和F测度高达41.60%。

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