基于学习分析的LMS数据的学生学习成绩预测模型

Benjamín Maraza-Quispe, Enrique Damian Valderrama-Chauca, Lenin Henry Cari-Mogrovejo, Jorge Milton Apaza-Huanca
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引用次数: 1

摘要

本研究旨在在KNIME平台上实现一个预测模型,利用学习管理系统(LMS)的数据分析和比较学业成绩预测,识别有学业风险的学生,以便及时产生干预措施。采用CRISP-DM方法,分为六个阶段:问题分析、数据分析、数据理解、数据准备、建模、评估和实施。本文通过圣奥古斯丁国立大学教育科学学院LMS中观察到的22项行为指标对在线学习行为进行分析。这些指标分布在五个方面:学习成绩、机会、家庭作业、社会方面和测验。该模型已在KNIME平台上使用简单回归树学习器训练算法实现。总体由30,000个学生记录组成,其中通过简单随机抽样抽取了1,000个记录样本。对该模型早期预测学生学业成绩的准确性进行了评价,并将观察到的22项行为指标与三门课程的学业成绩均值进行了比较。所实现模型的预测结果令人满意,相对于第一疗程的平均绝对误差为3。与第2个疗程的平均绝对误差为2.809,准确率为94.2%;与第3个疗程的平均绝对误差为2.779,准确率为93.8%。这些结果表明,该模型可用于从LMS数据集预测学生未来的学习成绩。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Model of Student Academic Performance from LMS data based on Learning Analytics
The present research aims to implement a predictive model in the KNIME platform to analyze and compare the prediction of academic performance using data from a Learning Management System (LMS), identifying students at academic risk in order to generate timely and timely interventions. The CRISP-DM methodology was used, structured in six phases: Problem analysis, data analysis, data understanding, data preparation, modeling, evaluation and implementation. Based on the analysis of online learning behavior through 22 behavioral indicators observed in the LMS of the Faculty of Educational Sciences of the National University of San Agustin. These indicators are distributed in five dimensions: Academic Performance, Access, Homework, Social Aspects and Quizzes. The model has been implemented in the KNIME platform using the Simple Regression Tree Learner training algorithm. The total population consists of 30,000 student records from which a sample of 1,000 records has been taken by simple random sampling. The accuracy of the model for early prediction of students' academic performance is evaluated, the 22 observed behavioral indicators are compared with the means of academic performance in three courses. The prediction results of the implemented model are satisfactory where the mean absolute error compared to the mean of the first course was 3. 813 and with an accuracy of 89.7%, the mean absolute error compared to the mean of the second course was 2.809 with an accuracy of 94.2% and the mean absolute error compared to the mean of the third course was 2.779 with an accuracy of 93.8%. These results demonstrate that the proposed model can be used to predict students' future academic performance from an LMS data set.
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