Handling Big Data in Education: A Review of Educational Data Mining Techniques for Specific Educational Problems

Yaw Boateng Ampadu
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Abstract

In the era of big data, where the amount of information is growing exponentially, the importance of data mining has never been greater. Educational institutions today collect and store vast amounts of data, such as student enrollment and attendance records, and their exam results. With the need to sift through enormous amounts of data and present it in a way that anyone can understand, educational institutions are at the forefront of this trend, and this calls for a more sophisticated set of algorithms. Data mining in education was born as a response to this problem. Traditional data mining methods cannot be directly applied to educational problems because of the special purpose and function they serve. Defining at-risk students, identifying priority learning requirements for varied groups of students, increasing graduation rates, monitoring institutional performance efficiently, managing campus resources, and optimizing curriculum renewal are just a few of the applications of educational data mining. This paper reviews methodologies used as knowledge extractors to tackle specific education challenges from large data sets of higher education institutions to the benefit of all educational stakeholders.
在教育中处理大数据:针对特定教育问题的教育数据挖掘技术综述
在信息量呈指数级增长的大数据时代,数据挖掘的重要性从未如此之大。今天的教育机构收集和存储大量的数据,如学生注册和出勤记录,以及他们的考试成绩。由于需要筛选大量数据并以任何人都能理解的方式呈现,教育机构处于这一趋势的前沿,这需要一套更复杂的算法。针对这个问题,教育领域的数据挖掘应运而生。传统的数据挖掘方法由于其特殊的目的和功能,不能直接应用于教育问题。定义高危学生,确定不同学生群体的优先学习需求,提高毕业率,有效监控机构绩效,管理校园资源,优化课程更新,这些只是教育数据挖掘的一小部分应用。本文回顾了从高等教育机构的大型数据集中解决特定教育挑战的知识提取方法,以使所有教育利益相关者受益。
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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