Application of The Support Vector Machine Algorithm for Timely Student Graduation Prediction Based on Streamlit Web at The Faculty of Informatics Engineering Nurul Jadid University

Yati Yati, Moh Ainol Yaqin, Anis Yusrotun Nadhiroh
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Abstract

Universities must provide good education so that they can produce good graduates.There are many factors that influence student graduation rates, one of the problems faced by an educational institution, especially at universities, whether state or private, is finding predictions of student graduation rates on time.One of the technological advances currently available is a system that can predict whether students will graduate on time or not. One of the machine planning algorithms that can be used is the Support Vector Machine.The results of this research were carried out by predicting the on-time graduation rate of students at Nurul Jadid University, Faculty of Engineering, Informatics Study Program. By using the Support Vector Machine method, this research used testing data of 20% of the data from 612 student data with the same 7 attributes. The data obtained 123 data which resulted in 72 student data being on time, 45 student data being late, 4 student data being correct. time and 2 students' data was late. From the results, the accuracy of the training data was 94%, while the results of the accuracy of the testing data received a score of 95%.  And based on the validity test of the Support Vector Machine algorithm, the presentation results obtained were Accuracy levels of 96%, Recall 98%, and Precision 94% from 123 testing data. Next, the model is deployed using Streamlit. Streamlit is an open source Python-based framework designed to help developers build interactive web-based programs in the fields of data science and machine learning. The accuracy rate is very good, this shows that SVM can be applied to predict student graduation rates.
基于流媒体网络的支持向量机算法在努鲁尔贾迪德大学信息工程学院学生及时毕业预测中的应用
大学必须提供良好的教育,这样才能培养出优秀的毕业生。影响学生毕业率的因素有很多,教育机构,尤其是国立或私立大学面临的问题之一就是如何预测学生的按时毕业率。目前的技术进步之一就是可以预测学生是否会按时毕业的系统。支持向量机是可以使用的机器规划算法之一。这项研究的结果是通过预测努鲁尔贾迪德大学工程学院信息学专业学生的按时毕业率得出的。通过使用支持向量机方法,本研究使用了612名学生数据中20%的测试数据,这些数据具有相同的7个属性。结果显示,72 名学生的数据准时,45 名学生的数据迟到,4 名学生的数据正确,2 名学生的数据迟到。从结果来看,训练数据的准确率为 94%,测试数据的准确率为 95%。 根据支持向量机算法的有效性测试,从 123 个测试数据中得到的演示结果是准确率 96%、召回率 98%、精确率 94%。接下来,使用 Streamlit 部署模型。Streamlit 是一个基于 Python 的开源框架,旨在帮助开发人员在数据科学和机器学习领域构建基于网络的交互式程序。准确率非常高,这表明 SVM 可用于预测学生毕业率。
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