教育数据挖掘在大规模课程中的应用

Luis Naito Mendes Bezerra, Márcia Terra da Silva
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引用次数: 3

摘要

在当前远程学习的背景下,学习管理系统(lms)可以存储大量的网络浏览和完成的作业数据。为了理解这种环境下学生的行为模式,教育工作者和管理者必须重新思考分析这些数据的传统方法,并使用适当的计算解决方案,如教育数据挖掘(EDM)。以前的研究已经测试了EDM在小数据集上的应用。本研究的主要贡献是EDM算法的应用,并分析了巴西一所大学为181,677名不同专业的本科生开设的大型课程的结果。在教育环境中使用关键算法,如决策树和聚类,可以揭示相关知识,包括最有助于通过课程的属性类型和不及格学生群体的行为模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Educational Data Mining Applied to a Massive Course
In the current context of distance learning, learning management systems (LMSs) make it possible to store large volumes of data on web browsing and completed assignments. To understand student behavior patterns in this type of environment, educators and managers must rethink conventional approaches to the analysis of these data and use appropriate computational solutions, such as educational data mining (EDM). Previous studies have tested the application of EDM on small datasets. The main contribution of the present study is the application of EDM algorithms and the analysis of the results in a massive course delivered by a Brazilian University to 181,677 undergraduate students enrolled in different fields. The use of key algorithms in educational contexts, such as decision trees and clustering, can reveal relevant knowledge, including the attribute type that most significantly contributes to passing a course and the behavior patterns of groups of students who fail.
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