Systematic Review of Educational Data Mining for Student Performance Prediction using Bibliometric Network Analysis (SeBriNA)

Eni Heni Hermaliani, A. Z. Fanani, H. Santoso, Affandy Affandy, Purwanto Purwanto, Muljono Muljono, Abdul Syukur, Dedy Setiadi, Fauzi Adi Rafrastara
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Abstract

Data mining has emerged as a way of working with large amounts of data in various fields of technology that produce data types quickly and correctly. In particular, emerging technologies such as data mining (DM), machine learning (ML), and big data are utilized to predict student performance. This paper uses bibliometrics to give a complete picture of the studies that have been done on how DM technologies are used in Educational Data Mining (EDM). The study aims to determine which DM techniques are most often used to predict student performance and how the field of DM for education to predict student performance has changed over time. To investigate the topic, we used both qualitative and quantitative methods. We used the Scopus database to find relevant articles published in scientific journals, and this study includes 130 articles published between 2015 and 2021. Also, we used the bibliometric library and bibliophily features for the bibliometric analysis. Our findings show that various EDM technologies are used at each stage of student performance prediction. Several supervised ML algorithms are used for prediction. The bibliometric analysis shows that EDM for predicting student performance is a proliferating field of science. Scientists from all over the world are keen to conduct research and collaborate in this interdisciplinary scientific field.
基于文献计量网络分析(SeBriNA)的教育数据挖掘学生成绩预测系统综述
数据挖掘作为一种处理大量数据的方法出现在各种技术领域,可以快速、正确地生成数据类型。特别是,数据挖掘(DM)、机器学习(ML)和大数据等新兴技术被用来预测学生的表现。本文使用文献计量学给出了关于如何在教育数据挖掘(EDM)中使用DM技术的研究的完整图景。该研究旨在确定哪种DM技术最常用于预测学生成绩,以及DM用于预测学生成绩的教育领域如何随着时间的推移而变化。为了调查这个话题,我们使用了定性和定量的方法。我们使用Scopus数据库查找发表在科学期刊上的相关文章,本研究包括2015年至2021年间发表的130篇文章。并利用文献计量图书馆和文献学特征进行文献计量分析。我们的研究结果表明,在学生成绩预测的每个阶段都使用了各种EDM技术。几种有监督的机器学习算法用于预测。文献计量学分析表明,EDM预测学生的表现是一个激增的科学领域。来自世界各地的科学家都热衷于在这个跨学科的科学领域进行研究和合作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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