APPLICATION OF RANDOM FOREST METHOD TO PREDICTION OF STUDENT CANDIDATES ACCEPTED IN THE SNMPTN PATHWAY (CASE STUDY AT UNIVERSITAS LAMBUNG MANGKURAT)

Vicka Karina
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Abstract

Academic planning is an essential aspect that needs to be carried out to plan the teaching and learning process in a campus, such as the admission of new students through the SNMPTN. At Lambung Mangkurat University, it is known that the partici- pants who took the SNMPTN during the 2021 admission period amounted to 7,703. It is recognized that selecting candidates is not easy due to many prospective students passing the selection but choosing to withdraw. Therefore, a system is needed to predict the graduation of prospective students through the SNMPTN. This research utilizes the Random Forest method to predict the graduation of prospective students through the SNMPTN. The data will be divided into 90% for training data and 10% for testing data, then using classification parameters with 300 n-estimators. The research yielded a precision value of 0.72, recall value of 0.46, and system accuracy of 89.3% For further research recommendations, other prediction methods can be explored to forecast the graduation rate of students through the SNMPTN, or a comparison of methods can be con- ducted to determine which method is more effective.
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应用随机森林法预测被 SNMPTN 途径录取的学生候选人(Universitas lambung mangkurat 案例研究)
学术规划是校园教学和学习过程规划的一个重要方面,例如通过SNMPTN录取新生。据了解,兰榜曼古拉特大学在 2021 年招生期间参加 SNMPTN 考试的人数达到 7703 人。人们认识到,由于许多潜在学生通过了选拔但选择退出,因此选拔候选人并不容易。因此,需要一个系统来预测通过 SNMPTN 考试的准大学生的毕业情况。本研究利用随机森林方法来预测通过 "SNMPTN "的准大学生的毕业情况。数据将被分为 90% 的训练数据和 10% 的测试数据,然后使用 300 个 n 估计器进行分类参数。研究得出的精确度值为 0.72,召回值为 0.46,系统准确度为 89.3%。 为进一步研究提出建议,可以探索其他预测方法,通过 SNMPTN 预测学生毕业率,或者对各种方法进行比较,以确定哪种方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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