学生毕业级预测使用了跨国物流回归方法

Rafika Syahranita, S. Suhartono, Syahiduz Zaman
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引用次数: 0

摘要

学生必须达到一定的目标才能获得学位,但可以延长他们在大学的时间或辍学(DO)。学生辍学问题已成为高校保障学生顺利毕业、减少辍学率的重要问题。民政事务处会影响高等教育院校的评审资格。印度尼西亚高等教育机构的质量是根据国家高等教育认证委员会(BAN-PT)的认证来衡量的。衡量的主要标准之一是学生和毕业生的质量。教育认证的质量是通过学生毕业率和大学留住学生的策略来衡量的。为了根据毕业时间类别预测学生的毕业情况,研究人员收集了毛拉纳马利克易卜拉欣马朗州立伊斯兰大学信息工程研究项目2012-2018年学生的学术数据。用作预测指标的变量包括性别、入学途径类型和第一至第六学期的平均成绩。对所得模型进行评估,准确率为85.5%,精密度为78.5%,召回率为93.9%,微观f1得分为89.8%。85.5%的准确率表明系统可以使用逻辑回归模型进行正确的分类。
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Prediksi Kategori Kelulusan Mahasiswa Menggunakan Metode Regresi Logistik Multinomial
Students must meet certain goals to earn a degree but can extend their time at university or drop out (DO). The problem of dropping out of students has become an important issue for tertiary institutions to ensure the success or graduation of students and reduce dropouts. DO can affect the accreditation of the tertiary institution. The quality of higher education institutions in Indonesia is measured based on accreditation from the National Accreditation Board for Higher Education or BAN-PT. One of the main standards measured is the Quality of Students and Graduates. The quality of educational accreditation is measured by the percentage of student graduation and the university's strategy to retain students. To predict student graduation based on graduation time categories, researchers collected academic data from students in 2012-2018 at the Informatics Engineering Study Program, State Islamic University of Maulana Malik Ibrahim Malang. The variables used as predictors are gender, type of entry pathway, and grade point average from semesters one to six. The resulting model was evaluated to obtain an accuracy value of 85.5%, a precision of 78.5%, a recall of 93.9%, and a micro f1-score of 89.8%. An accuracy value of 85.5% indicates that the system can classify properly using the logistic regression model.
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