一种解决班级失衡问题的过采样新方法——以学生成绩评价为例

Dilshad Jahin, Israt Jahan Emu, Subrina Akter, M. Patwary, Mohammad Arif Sobhan Bhuiyan, Mahdi H. Miraz
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引用次数: 4

摘要

学生的学习成绩是对教育机构进行排名的关键因素之一,尤其是在中学阶段。如果学生的表现没有得到适当的定义,那么学校的声誉就会受到威胁。因此,数据挖掘可以用于此目的,以获得较高的准确性。然而,数据不完整、不准确和/或有噪声,或者数据集中有不平衡的类标签,很可能会影响数据挖掘模型的准确性。本文提出了一种半监督过采样方法,首先准备一个平衡的数据集,然后将学生在任何给定课程中的整体表现分为二值类。使用UCI机器学习存储库中的学生成绩数据集,其中包含两门不同课程的学生成绩相关数据。详细的验证结果表明,决策树算法在平衡数据集上的性能优于不平衡数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Oversampling Technique to Solve Class Imbalance Problem: A Case Study of Students’ Grades Evaluation
The academic performance of the students is one of the critical aspects in ranking educational institutions, particularly at the secondary level. If the student’s performance is not appropriately defined, then the institution’s reputation is at risk. Therefore, data mining could be used for this purpose, to attain high accuracy. However, the data being incomplete, inaccurate and/or noisy, or with an imbalance class label in the dataset, is highly likely to affect the accuracy of the data mining model. This paper proposes a semi-supervised oversampling method to first prepare a balanced dataset and then to classify the students’ grades into a binary class with overall performance in any given course. The student performance dataset from the UCI machine learning repository is used, which contains student performance related data of two different courses. A detailed validation result shows that the decision tree algorithm performs better with the balanced dataset compared to the imbalanced one.
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