Design and Build PMB System with Prediction of Prospective Students Accepted or Withdrawal Using Random Forest Algorithm

Puteri Sejati
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Abstract

New Student Admission is one of the essential activities carried out regularly every year or semester. As the operational system of student admissions progresses, student admission data increases yearly. ESA Unggul University (UEU) has not used this data to make strategic decisions, market potential, and consider invitations to enter the academic path. So it is necessary to conduct research whose results can be used by UEU in analyzing prospective students at the time of new student admissions. In this study, data analysis was carried out from 2014 to 2019. This study aims to produce a design using the classification method to predict whether prospective students are accepted or withdrawn. In this study, 19,603 training data and 4,901 test data were used. The results showed the best Random Forest algorithm with an accuracy of 73.61%. The results of this study can be used to support the marketing department in minimizing the number of prospective students who resign.
利用随机森林算法,设计并建立具有录取或退学预测的PMB系统
新生入学是学校每年或每学期定期开展的重要活动之一。随着招生操作系统的不断完善,招生数据逐年增加。ESA Unggul大学(UEU)没有使用这些数据来制定战略决策,市场潜力,并考虑进入学术道路的邀请。因此,有必要进行研究,其结果可以用于UEU在新招生时分析潜在学生。本研究的数据分析时间为2014 - 2019年。本研究的目的是产生一个设计,使用分类方法来预测未来的学生是被接受还是被撤回。本研究共使用了19603个训练数据和4901个测试数据。结果表明,随机森林算法的准确率为73.61%。本研究的结果可用于支持市场部门尽量减少潜在学生的辞职人数。
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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