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Early prediction of undergraduate Student's academic performance in completely online learning: A five-year study

机译:本科生早期预测全面在线学习中的学术表现:五年的研究

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This decade, e-learning systems provide more interactivity to instructors and students than traditional systems and make possible a completely online (CO) education. However, instructors could not warn if a CO student is engaged or not in the course, and they could not predict his or her academic performance in courses. This work provides a collection of models (exploratory factor analysis, multiple linear regressions, cluster analysis, and correlation) to early predict the academic performance of students. These models are constructed using Moodle interaction data, characteristics, and grades of 802 undergraduate students from a CO university. The models result indicated that the major contribution to the prediction of the academic student performance is made by four factors: Access, Questionnaire, Task, and Age. Access factor is composed by variables related to accesses of students in Moodle, including visits to forums and glossaries. Questionnaire factor summarizes variables related to visits and attempts in questionnaires. Task factor is composed of variables related to consulted and submitted tasks. The Age factor contains the student age. Also, it is remarkable that Age was identified as a negative predictor of the performance of students, indicating that the student performance is inversely proportional to age. In addition, cluster analysis found five groups and sustained that number of interactions with Moodle are closely related to performance of students.
机译:这十年来,电子学习系统为教师和学生提供更多的互动,而不是传统系统,并在线(CO)教育。但是,如果一个学生在课程中订婚,教练无法警告,他们无法预测他或她在课程中的学术表现。这项工作提供了一系列模型(探索性因子分析,多元线性回归,集群分析和相关性),早期预测学生的学术表现。这些型号由Co University的Moodle互动数据,特征和802名本科生等级构建。模型结果表明,对学生表现的预测的主要贡献是四个因素:访问,调查问卷,任务和年龄。访问因子由与Moodle的学生访问相关的变量组成,包括访问论坛和词汇表。调查问卷因子总结了与问卷调查和尝试相关的变量。任务因子由与咨询和提交的任务相关的变量组成。年龄因素包含学生年龄。此外,令人显着的是,年龄被确定为学生表现的负面预测因素,表明学生表现与年龄成反比。此外,集群分析发现了五组,并持续了与Moodle的相互作用与学生的表现密切相关。

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