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Student data mining solution-knowledge management system related to higher education institutions

机译:学生数据挖掘解决方案-与高等院校有关的知识管理系统

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摘要

Higher education institutions (HEIs) are often curious whether students will be successful or not during their study. Before or during their courses the academic institutions try to estimate the percentage of successful students. But is it possible to predict the success rate of students enrolled in their courses? Are there any specific student characteristics, which can be associated with the student success rate? Is there any relevant student data available to HEIs on the basis of which they could predict the student success rate? The answers to the above research questions can generally be obtained using data mining tools. Unfortunately, data mining algorithms work best with large data sets, while student data, available to HEIs, related to courses are limited and falls into the category of small data sets. Thus, the study focuses on data mining for small student data sets and aims to answer the above research questions by comparing two different data mining tools. The conclusions of this study are very promising and will encourage HEIs to incorporate data mining tools as an important part of their higher education knowledge management systems.
机译:高等教育机构(HEIs)通常对学生在学习期间是否会成功感到好奇。在课程开始之前或期间,学术机构会尝试估算成功学生的比例。但是,能否预测入学学生的成功率?有没有与学生成功率相关的特定学生特征? HEI是否有任何相关的学生数据可用来预测学生成功率?通常可以使用数据挖掘工具来获得上述研究问题的答案。不幸的是,数据挖掘算法最适用于大型数据集,而与课程相关的可用于HEI的学生数据是有限的,属于小型数据集。因此,本研究侧重于针对小型学生数据集的数据挖掘,旨在通过比较两种不同的数据挖掘工具来回答上述研究问题。这项研究的结论很有希望,并且将鼓励高校将数据挖掘工具纳入其高等教育知识管理系统的重要组成部分。

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