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A Novel Learning Early-Warning Model Based on Random Forest Algorithm

机译:基于随机森林算法的新型学习预警模型

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The learning early-warning is an effective way to optimize the teaching effect and teach students in accordance of their aptitude. At present, the learning early-warning faces low accuracy, high value of MSE and MAE. We propose a novel learning early-warning model: LEWM-RFA. The model divides students' learning behaviors data into three dimensions: knowledge, behavior and attitude. Then the model uses random forest algorithm to extract features that can affect students' grades, and then predicts students' final exam scores. Students are divided into three warning levels according to their grades. Compared with the model based on the linear regression algorithm, the LEWM-RFA's MSE decreases by 27.498% and the LEWM-RFA's MAE decreases by 26.960%.
机译:学习预警是一种有效的教学方法,可以有效地提高教学效果,并根据自己的能力向学生授课。当前,学习预警面临着准确性低,MSE和MAE较高的价值。我们提出了一种新颖的学习预警模型:LEWM-RFA。该模型将学生的学习行为数据分为三个维度:知识,行为和态度。然后,该模型使用随机森林算法提取可能影响学生成绩的特征,然后预测学生的期末考试成绩。根据他们的成绩,学生分为三个警告等级。与基于线性回归算法的模型相比,LEWM-RFA的MSE降低了27.498%,LEWM-RFA的MAE降低了26.960%。

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