数据挖掘在教育领域的应用

IF 2 4区 教育学 Q2 EDUCATION & EDUCATIONAL RESEARCH
S. Shrestha, M. Pokharel
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引用次数: 1

摘要

本工作的目的是研究数据挖掘(DM)方法在教育中的使用趋势。它讨论了用于不同类型教育数据的不同数据挖掘技术。相关论文最初是从包含在线学习(OL)和教育数据挖掘(EDM)等词的元数据中选择的。然后根据DM算法、研究目的和使用的数据类型对论文进行过滤。研究结果表明,EDM是最常用的预测学生学业成功的技术,最常用的目的是分类,其次是聚类和关联。此外,本研究还包含了对moodle数据进行异常发现的研究。采用Kmeans聚类方法对由log和quiz数据集组成的moodle数据寻找最优聚类数。互联网用户数量的增长增加了通过在线学习的过程。因此,在OL系统中执行一些活动,这些活动产生大量的数据,供分析以获得有用的信息。因此,这种类型的研究非常有利于学者和教师识别学习者的行为并制定合适的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Mining Applications Used in Education Sector
The purpose of this work is to study the usage trends of Data Mining (DM) methods in education. It discusses different data mining techniques used for different types of educational data. The related papers were initially selected from the metadata containing words like Online Learning (OL) and Educational Data Mining (EDM). The papers were then filtered on the basis of DM algorithms, the purpose of study, and the types of data used. The findings suggested that EDM is the most commonly used technique for the prediction of students‟ academic success, and the most used purpose is classification, followed by clustering and association. Further, this research also contains the study conducted on moodle data to find anomalies. Kmeans clustering was applied to find the optimal number of clusters on moodle data that consists of log and quiz dataset. The growth in the number of Internet users has increased learning through the online process. Hence, several activities are performed in OL systems, which generate a massive amount of data to be analysed to obtain useful information. Therefore, this type of research is very beneficial to academicians and instructors to identify the learner‟s behaviors and develop suitable models.
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来源期刊
Journal of Educational Research
Journal of Educational Research EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
3.50
自引率
0.00%
发文量
26
期刊介绍: The Journal of Educational Research is a well-known and respected periodical that reaches an international audience of educators and others concerned with cutting-edge theories and proposals. For more than 100 years, the journal has contributed to the advancement of educational practice in elementary and secondary schools by judicious study of the latest trends, examination of new procedures, evaluation of traditional practices, and replication of previous research for validation. The journal is an invaluable resource for teachers, counselors, supervisors, administrators, curriculum planners, and educational researchers as they consider the structure of tomorrow''s curricula. Special issues examine major education issues in depth. Topics of recent themes include methodology, motivation, and literacy. The Journal of Educational Research publishes manuscripts that describe or synthesize research of direct relevance to educational practice in elementary and secondary schools, pre-K–12. Special consideration is given to articles that focus on variables that can be manipulated in educational settings. Although the JER does not publish validation studies, the Editors welcome many varieties of research--experiments, evaluations, ethnographies, narrative research, replications, and so forth.
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