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Artificial Neural Networks for Educational Data Mining in Higher Education: A Systematic Literature Review

机译:面向高等教育教育数据挖掘的人工神经网络:系统文献综述

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摘要

Efforts to raise the bar of higher education so as to respond to dynamic societal/industry needs have led to a number of initiatives, including artificial neural network (ANN) based educational data mining (EDM) inclusive. With ANN-based EDM, humongous amount of student data in higher institutions could be harnessed for informed academic advisory that promotes adaptive learning for purposes of student retention, student progression, and cost saving. Mining students' data optimally requires predictive data mining tool and machine learning technique like ANN. However, despite acknowledging the capability of ANN-based EDM for efficiently classifying students' learning behavior and accurately predicting students' performance, the concept has received less than commensurate attention in the literature. This seems to suggest that there are gaps and challenges confronting ANN-based EDM in higher education. In this study, we used the systematic literature review technique to gauge the pulse of researchers from the viewpoint of modeling, learning procedure, and cost function optimization using research studies. We aim to unearth the gaps and challenges with a view to offering research direction to upcoming researchers that want to make invaluable contributions to this relatively new field. We analyzed 190 studies conducted in 2010-2018. Our findings reveal that hardware challenges, training challenges, theoretical challenges, and quality concerns are the bane of ANN-based EDM in higher education and offer windows of opportunities for further research. We are optimistic that advances in research along this direction will make ANN-based EDM in higher education more visible and relevant in the quest for higher education-driven sustainable development.
机译:为了应对不断变化的社会/行业需求,努力提高高等教育的标准,导致了许多举措,包括基于人工神经网络(ANN)的教育数据挖掘(EDM)。借助基于 ANN 的 EDM,可以利用高等院校的大量学生数据进行明智的学术咨询,从而促进适应性学习,从而留住学生、提高学生进步和节省成本。以最佳方式挖掘学生的数据需要预测性数据挖掘工具和机器学习技术,如ANN。然而,尽管承认基于ANN的EDM能够有效地对学生的学习行为进行分类并准确预测学生的表现,但该概念在文献中并没有得到相应的关注。这似乎表明,基于ANN的EDM在高等教育中面临着差距和挑战。本研究采用系统文献综述技术,从建模、学习过程、成本函数优化等角度,通过研究来判断研究者的脉搏。我们的目标是挖掘差距和挑战,以期为希望为这个相对较新的领域做出宝贵贡献的即将到来的研究人员提供研究方向。我们分析了2010-2018年进行的190项研究。我们的研究结果表明,硬件挑战、培训挑战、理论挑战和质量问题是高等教育中基于 ANN 的 EDM 的祸根,并为进一步研究提供了机会之窗。我们乐观地认为,沿着这个方向的研究进展将使基于ANN的EDM在高等教育中更加明显和相关,以寻求高等教育驱动的可持续发展。

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