Combination of Case Based Reasoning with Nearest Neighbor and Decision Tree for Early Warning System of Student Achievement

Mardiyyah Hasnawi, N. Kurniati, St. Hajrah Mansyur, Irawati, Tasrif Hasanuddin
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引用次数: 2

Abstract

Student achievement is one of the main focuses to increase university credibility. An early warning system is needed to prevent more risks. The early warning systems (EWS) of student achievement has been possible with a combination of case based reasoning (CBR), k-nearest neighbor (K-NN), and decision tree. CBR is used to obtain a solution that stores knowledge so that it can predict student achievement. This research is combining the Case Based Reasoning, K-Nearest Neighbor (K-NN), and Decision Tree (DT) methods for the prediction of student achievement that applied in the early warning system. The attributes of an early warning system of student achievement are genders, distances of residence, ages, high schools, majors, and grade point average (GPA) for six semesters. The results show that accuracy rate is 60.5% of 55 data in the early warning system of student achievement and a model CBR for Early Warning System of Student Achievement.
基于案例的最近邻推理与决策树相结合的学生成绩预警系统
学生成绩是提高大学信誉的主要焦点之一。需要一个早期预警系统来防止更多的风险。基于案例推理(CBR)、k-最近邻(K-NN)和决策树相结合的方法可以实现学生成绩预警系统(EWS)。CBR用于获得存储知识的解决方案,以便预测学生的成绩。本研究将基于案例的推理、k -最近邻(K-NN)和决策树(DT)方法结合起来,用于预测早期预警系统中的学生成绩。学生成绩预警系统的属性是性别、居住距离、年龄、高中、专业、6个学期的平均绩点(GPA)。结果表明,学生成绩预警系统中55个数据的准确率为60.5%,为学生成绩预警系统提供了模型CBR。
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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