Implementasi Algoritma Naive Bayes Untuk Klasifikasi Penerima Beasiswa (Studi Kasus Universitas Hamzanwadi)

N. Nurhidayati, Yahya Yahya, F. Fathurrahman, L. Samsu, Wajizatul Amnia
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引用次数: 1

Abstract

Every year the University offers various types of scholarships to its students, including Hamzanwadi Selong University, East Lombok. One type of scholarship offered is the Bidikmisi scholarship (KIP/K) which is intended for students who have middle to lower economic levels but have good academic achievement or potential. Every year the number of applicants for this scholarship continues to increase, but the number received each year is limited. The large number of piles of files applying for scholarships and the manual selection process tends to be ineffective and efficient and the results of the selection are inaccurate, so a system is needed that is able to assist in the selection process quickly, easily and on target. The method used is CRIS-DM with the Naive Bayes Classifier algorithm modeling, this method is an approach that refers to the Bayes theorem which combines previous knowledge with new knowledge. The variables consist of 7 attributes, namely: Name, DTKS status, achievement, parents' occupation, total income of parents, home ownership, and number of family dependents[1]. Testing was carried out using k-fold cross validation, and the highest accuracy results were obtained from k-fold 4 of 91.43%, while the AUC was 0.996% with a very good diagnostic classification. Thus it can be interpreted that the Naive Bayes algorithm is very well used in the selection of scholarships for bidikmisi scholarships at Hamzanwadi University
学术评审Naive Bayes算法的实施(Hamzanwadi university案例研究)
大学每年为学生提供各种类型的奖学金,包括东龙目岛的Hamzanwadi Selong大学。提供的一种奖学金是Bidikmisi奖学金(KIP/K),旨在为中等到较低经济水平但具有良好学术成就或潜力的学生提供。每年申请该奖学金的人数不断增加,但每年收到的人数有限。大量堆积的申请奖学金的文件和人工选择的过程往往是无效的和高效的,选择的结果是不准确的,所以需要一个系统,能够帮助在选择过程中快速,方便和目标。使用的方法是crisi - dm与朴素贝叶斯分类器算法建模,该方法是一种借鉴贝叶斯定理将原有知识与新知识相结合的方法。变量由7个属性组成,分别是:姓名、DTKS状态、成就、父母职业、父母总收入、房屋所有权、家庭受抚养人数[1]。采用k-fold交叉验证进行检验,k-fold 4的准确率最高,为91.43%,AUC为0.996%,诊断分类非常好。由此可以解释,朴素贝叶斯算法在Hamzanwadi大学bidikmisi奖学金的奖学金选择中得到了很好的应用
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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