基于朴素贝叶斯分类和k近邻的学生毕业时效性预测

Anwarudin Anwarudin, W. Andriyani, B. Dp, Dommy Kristomo
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引用次数: 2

摘要

从学生毕业的准时程度可以看出大学的质量。对学生毕业时间的预测可以作为评价学生成绩的辅助决策之一。目前,STIKES Guna Bangsa Yogyakarta的医学实验室技术研究项目还没有工具来预测学生提前毕业的准时程度。本研究的目的是评估朴素贝叶斯分类和k近邻算法在学生毕业时间预测建模中的应用。本研究采用2015/2016至2018/2019学年(TA)医学检验技术专业学生的学业数据。本研究采用实验方法,比较了朴素贝叶斯分类(NBC)和k -最近邻(KNN)算法。验证模型使用5倍交叉验证,而评估模型使用混淆矩阵。结果表明,基于NBC的预测准确率为96.11%,精密度为82.11%,召回率为100.00%。同时,使用KNN进行预测的准确率为97.68%,准确率为100.00%,召回率为86.11%。因此,KNN是一种算法,具有更高的准确性,以解决预测医学实验室技术研究计划STIKES Guna Bangsa日惹学生毕业的时效性的情况
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Prediction on the Students’ Graduation Timeliness Using Naive Bayes Classification and K-Nearest Neighbor
The college quality can be seen from the level of punctuality of student graduation. The Prediction on students’ graduation timelines can be used as one of the supporting decisions to evaluate students’ performance. Currently, the Medical Laboratory Technology study program of STIKES Guna Bangsa Yogyakarta does not have tools to predict the level of students’ graduation punctuality early yet. The purpose of this study is to evaluate the application of the Naive Bayes Classification and K-Nearest Neighbor algorithms with predictive modeling of student graduation period. This study applied the academic data from students of the Medical Laboratory Technology study program for the Academic Year (TA) 2015/2016 to 2018/2019. This study utilized an experimental approach by comparing the methods of the Naive Bayes Classification (NBC) and K-Nearest Neighbor (KNN) algorithms. The validation model uses 5-fold Cross Validation, while the evaluation model uses a Confusion Matrix. The results illustrated that the prediction with NBC in this case obtained an accuracy of 96.11%, precision of 82.11% and Recall of 100.00%. Meanwhile, predictions using KNN obtained accuracy of 97.68%, precision of 100.00% and Recall of 86.11%. Thus, KNN is an algorithm with an enhanced level of accuracy to solve the case of predicting the timeliness of students’ graduation of the Medical Laboratory Technology Study Program STIKES Guna Bangsa Yogyakarta
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