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Predicting Dropout-Prone Students in E-Learning Education System

机译:预测电子学习教育系统中的辍学学生

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摘要

High rate of students dropout in courses has been a major problem for many universities or educational institutions that offer online education. If the dropout-prone students can be identified in their early stages, the dropout rate can be reduced by providing individualized care to the students at-risk. Due to the electronic nature of the e-learning courses, various attributes of the student progress can be monitored and analyzed automatically over time. In this paper, a technique for predicting students who are prone to dropout from the online courses has been proposed that progressively analyzes a set of per-learner attributes of the students' activities overtime. Since a single machine learning technique may fail to accurately identify some dropout-prone students whereas others may succeed, this technique uses a combination of multiple classifiers (ensemble of classifiers) for this analysis. The results of the validation found the technique to be promising in predicting dropout-prone students.
机译:对于许多提供在线教育的大学或教育机构来说,高辍学率一直是一个主要问题。如果可以在早期阶段识别出辍学容易的学生,则可以通过为处于危险中的学生提供个性化的护理来降低辍学率。由于电子学习课程的电子性质,可以随着时间的流逝自动监视和分析学生进度的各种属性。在本文中,已经提出了一种预测容易从在线课程中辍学的学生的技术,该技术逐步分析了学生每时每刻学习活动的属性。由于单一的机器学习技术可能无法准确地识别一些容易辍学的学生,而其他人则可能成功,因此该技术使用多个分类器(分类器集合)的组合进行此分析。验证的结果发现,该技术在预测容易辍学的学生方面很有前途。

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