Prediksi Kelulusan Tepat Waktu Menggunakan Metode C4.5 DAN K-NN (Studi Kasus : Mahasiswa Program Studi S1 Ilmu Farmasi, Fakultas Farmasi, Universitas Muhammadiyah Purwokerto)

E. Purwanto, K. Kusrini, S. Sudarmawan
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引用次数: 4

Abstract

The graduation profile is one of the key elements for the accreditation standard of higher education. It mirrors the performance of the applied educational system within a period of time. The better it is, the better the accreditation will be. In support of this, a graduation prediction may be conducted to the academic database of the students. It is of pivotal to trace and classify the historical data into the data training and data testing, thus, to predict the on time-graduation. The step is importantly done to help decide the better management of learning processes. This study was therefore done to analyse certain variables applied to predict the on time-graduation using the algorythms of C.45 and K-Nearest Neighbour (K-NN). The data mining was done to the academic database of the students of the Pharmacy study programme, Pharmacy Faculty, Muhammadiyah University of Purwokerto by adding certain variables into the process. The data was then classified into the data training and data testing. Backward selection was done to select the best and most influential variables for the dataset. The study further resulted that by using the algorhythm of C.45 and backward selection, the accuracy of the graduation reached 92.75%. It is different from the acurracy the K-NN and backward selection showed that reached 96.14%. The result confirmed that the KNN showed the better accuracy than the C.45. It considerably benefitted the study programme to make better decisions on increasing the quality of services, in particular that of leraning processes.
使用C4.5和K-NN方法及时完成的毕业预测。
毕业概况是高等教育认证标准的关键因素之一。它反映了应用教育系统在一段时间内的表现。它越好,认证就会越好。为了支持这一点,可以对学生的学术数据库进行毕业预测。对历史数据进行跟踪和分类是数据训练和数据测试的关键,从而预测准时毕业。这一步的重要意义在于帮助决定如何更好地管理学习过程。因此,本研究分析了使用C.45和k -近邻(K-NN)算法预测准时毕业的某些变量。通过在过程中添加某些变量,对普沃克尔托穆罕默德迪亚大学药学院药学研究项目学生的学术数据库进行了数据挖掘。然后将数据分为数据训练和数据测试。通过反向选择,为数据集选择最佳和最具影响力的变量。进一步研究表明,采用C.45算法和逆向选择,毕业准确率达到92.75%。不同于K-NN和后向选择的准确率达到96.14%。结果表明,KNN的精度优于C.45。在提高服务质量,特别是学习过程的质量方面作出更好的决定,对研究方案大有裨益。
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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