使用 Naive Bayes 算法预测雅加达国立大学信息学与计算机工程教育专业学生在线学习期间的平均学分绩点 (GPA)

Miftahul Jannah, Widodo Widodo, Hamidillah Ajie
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引用次数: 0

摘要

从面对面学习到在线学习的学习模式转变对学生的学习产生了一些影响,这反映在他们的学业成绩上。本研究旨在确定采用数据挖掘分类技术的算法模型在预测雅加达国立大学信息学和计算机工程教育专业学生在线学习期间的学期平均学分绩点(GPA)方面的性能。预测采用了 Naive Bayes 算法,数据集来自 2020 年和 2021 年的调查问卷。获得的总数据为 155 条记录,包含 13 个属性,其中 1 个是 ID 属性(包括 NIM),11 个是常规属性(包括性别、大学入学、智能手机设施、网络条件、偏好的在线应用、学习兴趣、学习态度、学习创造力、父母支持、学习小组和在线学习期间的其他课外活动),1 个是标签属性(即第 3 和第 5 学期学生的学期平均学分绩点)。这项研究的评估包括混淆矩阵和 ROC(接收者工作特征)曲线。混淆矩阵的准确率为 75%,精确率为 28.33%,召回率为 26.43%。ROC 曲线的 AUC 值为 0.679,表明分类效果较差。这项研究还应用了 SMOTE 数据平衡技术,混淆矩阵评估的准确率为 88.46%,精确率为 57.43%,召回率为 52.14%。此外,ROC 曲线的 AUC 值为 0.809,属于良好分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Grade Point Average (GPA) for Students at Informatics and Computer Engineering Education – Universitas Negeri Jakarta during Online Learning Using Naive Bayes Algorithm
The transition of learning models from face-to-face to online learning has had several impacts on student learning, reflected in their academic achievements. This study aims to determine the performance of the algorithm model using data mining classification techniques in predicting the Semester Grade Point Average (GPA) of Informatics and Computer Engineering Education students, at Universitas Negeri Jakarta during online learning. The prediction employed the Naive Bayes algorithm and the dataset obtained by collecting questionnaires from 2020 and 2021 batches. The total data obtained is 155 records with 13 (thirteen) attributes in the form of 1 (one) ID attribute including NIM, 11 (eleven) regular attributes including gender, college entrance, smartphone facilities, network conditions, preferred online applications, interest in learning, learning attitudes, learning creativity, parental support, study groups, and other activities outside of lectures during online learning, and 1 (one) the label attribute namely the Semester Grade Point Average for students in 3rd and 5th semester. The evaluation of this research involved the confusion matrix and the ROC (Receiver Operating Characteristic) curve. Confusion matrix resulted in an accuracy of 75%, precision of 28.33%, and recall of 26.43%. The ROC curve resulted in an AUC value of 0.679, indicating the category of poor classification. This study also applied the SMOTE data balancing technique, leading to a confusion matrix evaluation with 88.46% accuracy, 57.43% precision, and 52.14% recall. Furthermore, the ROC curve resulted in an AUC value of 0.809 which is categorized as a Good classification.
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