STUDENT GRADUATION TIME PREDICTION USING LOGISTIC REGRESSION, DECISION TREE, SUPPORT VECTOR MACHINE, AND ADABOOST ENSEMBLE LEARNING

Ardhana Desfiandi, Benfano Soewito
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Abstract

Universities in Indonesia are working hard to improve the graduation rates of their students as it is considered a measure of success and quality in terms of accreditation. This study focuses on analyzing the effectiveness of machine learning algorithms, regression, Support Vector Machine (SVM) Decision Tree and ensemble learning, with AdaBoost wether the Computer Science students will graduate on time or not. The data used for this analysis consists of student records from 2015 to 2019. Includes 14 variables. To understand the relationships between these variables a two-dimensional visualization called a Heatmap was employed. The research findings indicate that the Support Vector Machine (SVM) and AdaBoost Decision Tree (DT) algorithm performs better than the other algorithms. The Decision Tree and AdaBoost (DT) model achieved an F1- score of 0,76 and 0,82. This research contributes towards enhancing education management by facilitating decision making to ensure timely graduation, for student
利用逻辑回归、决策树、支持向量机和adaboost集成学习预测学生毕业时间
印度尼西亚的大学正在努力提高学生的毕业率,因为这被认为是衡量成功和质量的认证标准。本研究重点分析了机器学习算法、回归、支持向量机(SVM)决策树和集成学习的有效性,并利用AdaBoost分析了计算机科学专业学生是否按时毕业。该分析使用的数据包括2015年至2019年的学生记录。包括14个变量。为了理解这些变量之间的关系,采用了一种称为热图的二维可视化方法。研究结果表明,支持向量机(SVM)和AdaBoost决策树(DT)算法的性能优于其他算法。决策树和AdaBoost (DT)模型的F1-得分分别为0.76和0.82。本研究有助于加强教育管理,促进学生决策,确保学生及时毕业
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