基于全学习过程的学生成绩分析与预测

M. Wu, Hongge Zhao, Xiaoyu Yan, Yun Guo, Kai Wang
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引用次数: 4

摘要

混合学习越来越多地应用于大学教学中,形成性评价已成为评价学生成绩的主要方法。基于现有课程的形成性评价数据,如何对学生在未来的学习过程中可能出现的问题进行建模、分析和预测,并提出学习策略建议,是值得深入研究的问题。本文采用Apriori算法对南开大学《程序设计基础》课程形成性评价数据进行关联分析,结果表明,SPOC视频分数与案例研究作业分数等之间存在较强的关联规律。采用K-Means算法对SPOC平台成绩、线下课程成绩和期末考试成绩进行聚类分析,结果表明,两个学期不同类别学生的优劣势是一致的。最后,将第一学期的聚类结果加入到数据集中,使用Random Forest进行特征选择,并分别训练四个集成学习模型来预测期末考试成绩。结果表明,XGBoost模型效果最好,预测两学期期末考试成绩的准确率分别为77.02%和80.10%。
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Student Achievement Analysis and Prediction Based on the Whole Learning Process
Blended learning is increasingly used in college teaching, and formative evaluation has become the main method for assessing student performance. Based on the formative evaluation data of an existing course, how to model, analyze and predict the possible problems of students in the future learning process and give recommendations on learning strategy are problems worthy of in-depth study. In this paper, Apriori algorithm was used to perform association analysis on the formative evaluation data of the Fundamentals of Programming course in Nankai University, the results indicate that there are strong association rules between SPOC video scores, case study assignments scores, etc. K-Means algorithm was used to perform cluster analysis on SPOC platform scores, offline course scores and final exam scores, the results indicate that the advantages and disadvantages of students of different categories are consistent in two semesters. Finally, the clustering results of the first semester were added to the data set, Random Forest was used for feature selection, and four ensemble learning models were trained respectively to predict final exam grades. The results show that the XGBoost model works best, the accuracy of predicting the final exam grades of two semesters is 77.02% and 80.10%, respectively.
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