提高学生毕业预测的匹配预处理方法

Wanthanee Prachuabsupakij, Pafan Doungpaisan
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引用次数: 2

摘要

本文的目的是通过匹配SMOTE算法和Releif算法两种预处理方法,提高基于规则的学生毕业预测学习的有效性和效率,以帮助提高教育系统的质量。本文使用了包含544名学生数据的真实数据集,这些数据来自泰国北曼谷蒙库特国王科技大学Prachinburi校区的注册信息系统。该数据集使用四个基于规则的学习器(DT, OneR, PART和DTNB)进行处理。实验结果表明,与其他方法相比,DTNB提供了更高的精度、召回率、f-measure和g-mean。因此,采用DTNB算法对预测学生毕业率有显著提高。从我们的方法中获得的模型被用来规划一个学习计划,将提供四年毕业的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Matching preprocessing methods for improving the prediction of student's graduation
the aim of this paper is to improve the effectiveness and efficiency of rule-based learning for predicting student's graduation to help in enhancing the quality of education system by matching two preprocessing methods, which are SMOTE and Releif algorithms. This paper used the real-world dataset, which contains 544 students data, obtained from the registration information system at King Mongkut's University of Technology North Bangkok, Prachinburi Campus, Thailand. This dataset is processed with four rule-based learners (DT, OneR, PART, and DTNB). The experimental results have shown that DTNB is providing improved precision, recall, f-measure, and g-mean compared to other methods. Therefore, DTNB algorithm is used to the significant improvement of the prediction student's graduation. The model obtained from our method is used to plan a program of study that will provide the opportunity to graduate in four years.
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