Kartarina Kartarina, Ni Ketut Sriwinarti, Nita Juniarti
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Students who enter have a large number, but students who graduate on time according to the provisions are far very small, resulting in accumulation of the high number of students in each period of graduation, so it takes the initial predictions to quickly overcome these problems. Based on the results of designing, implementing, testing, and testing the Student Graduation Prediction Application program using the K-NN and Naive Bayes Methods with the Cross Validation method, the result is an accuracy for the K-NN method of 96.18% and for the Naive Bayes method an accuracy of 91.94% with using the RapideMiner accuracy test. So based on the results of the two tests between the K-NN and Naive Bayes methods which produce the highest accuracy, namely the K-NN method with an accuracy of 96.18%. So it can be concluded that the K-NN method is more feasible to use to predict student graduation","PeriodicalId":399621,"journal":{"name":"JTIM : Jurnal Teknologi Informasi dan Multimedia","volume":"50 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"1900-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Analisis Metode K-Nearest Neighbors (K-NN) Dan Naive Bayes Dalam Memprediksi Kelulusan Mahasiswa\",\"authors\":\"Kartarina Kartarina, Ni Ketut Sriwinarti, Nita Juniarti\",\"doi\":\"10.35746/jtim.v3i2.159\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"In this research the author aims to apply the K-NN and Naive Bayes algorithms for predicting student graduation rates at Sekolah Tinggi Pariwisata (STP) Mataram, The comparison of these two methods was carried out because based on several previous studies it was found that K-NN and Naive Bayes are well-known classification methods with a good level of accuracy. But which one has a better accuracy rate than the two algorithms, that's what researchers are trying to do. The output of this application is in the form of information on the prediction of student graduation, whether to graduate on time or not on time. The selection of STP as the research location was carried out because of the imbalance between the entry and exit of students who had completed their studies. Students who enter have a large number, but students who graduate on time according to the provisions are far very small, resulting in accumulation of the high number of students in each period of graduation, so it takes the initial predictions to quickly overcome these problems. 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引用次数: 0
摘要
在本研究中,作者旨在应用K-NN和朴素贝叶斯算法来预测Sekolah Tinggi Pariwisata (STP) Mataram的学生毕业率,对这两种方法进行比较,因为基于先前的几项研究发现,K-NN和朴素贝叶斯是众所周知的分类方法,具有良好的准确性。但哪一种算法比这两种算法的准确率更高,这正是研究人员正在努力做的。该应用程序的输出形式是预测学生毕业的信息,是否按时毕业。选择STP作为研究地点是因为完成学业的学生进入和退出的比例不平衡。进入的学生人数很多,但按规定按时毕业的学生却远远很少,导致每个毕业时期的学生人数积累很高,所以需要初步的预测才能迅速克服这些问题。基于使用K-NN和朴素贝叶斯方法设计、实现、测试和测试学生毕业预测应用程序的结果,使用RapideMiner精度测试,K-NN方法的准确率为96.18%,朴素贝叶斯方法的准确率为91.94%。因此,基于K-NN和朴素贝叶斯方法之间的两次测试结果,K-NN方法产生了最高的准确率,即准确率为96.18%。因此,K-NN方法在预测学生毕业情况方面更为可行
Analisis Metode K-Nearest Neighbors (K-NN) Dan Naive Bayes Dalam Memprediksi Kelulusan Mahasiswa
In this research the author aims to apply the K-NN and Naive Bayes algorithms for predicting student graduation rates at Sekolah Tinggi Pariwisata (STP) Mataram, The comparison of these two methods was carried out because based on several previous studies it was found that K-NN and Naive Bayes are well-known classification methods with a good level of accuracy. But which one has a better accuracy rate than the two algorithms, that's what researchers are trying to do. The output of this application is in the form of information on the prediction of student graduation, whether to graduate on time or not on time. The selection of STP as the research location was carried out because of the imbalance between the entry and exit of students who had completed their studies. Students who enter have a large number, but students who graduate on time according to the provisions are far very small, resulting in accumulation of the high number of students in each period of graduation, so it takes the initial predictions to quickly overcome these problems. Based on the results of designing, implementing, testing, and testing the Student Graduation Prediction Application program using the K-NN and Naive Bayes Methods with the Cross Validation method, the result is an accuracy for the K-NN method of 96.18% and for the Naive Bayes method an accuracy of 91.94% with using the RapideMiner accuracy test. So based on the results of the two tests between the K-NN and Naive Bayes methods which produce the highest accuracy, namely the K-NN method with an accuracy of 96.18%. So it can be concluded that the K-NN method is more feasible to use to predict student graduation