Educational data mining: a case study for predicting dropout-prone students

S. Kotsiantis
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引用次数: 61

Abstract

Student dropout occurs quite often in universities providing distance education and the dropout rates are definitely higher than those in conventional universities. Limiting dropout is essential in university-level distance learning and therefore the ability to predict students' dropout could be useful in a great number of different ways. Generally, data sets from this domain exhibit skewed class distributions in which most cases are allotted to the normal class (students that continue their studies) and fewer cases to the dropout class, the most interesting class. A classifier induced from an imbalanced data set has, typically, a low error rate for the majority class and an unacceptable error rate for the minority class. This paper firstly provides a systematic study on the various methodologies that have tried to handle this problem. Finally, it presents an experimental study of these methodologies with a proposed local cost sensitive technique and it concludes that such a framework can be a more effective solution to the problem.
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教育数据挖掘:预测易辍学学生的案例研究
在提供远程教育的大学中,学生辍学现象很常见,而且辍学率肯定高于传统大学。限制辍学率在大学水平的远程学习中是必不可少的,因此预测学生辍学率的能力在很多不同的方面都是有用的。通常,这个领域的数据集表现出倾斜的班级分布,其中大多数情况分配给正常班级(继续学习的学生),而较少的情况分配给退学班级(最有趣的班级)。通常,从不平衡数据集导出的分类器对于多数类具有较低的错误率,而对于少数类具有不可接受的错误率。本文首先对试图处理这一问题的各种方法进行了系统的研究。最后,本文对这些方法进行了实验研究,提出了一种局部成本敏感技术,并得出结论,这种框架可以更有效地解决问题。
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