A data science approach to Predict the University Students at risk of semester dropout: Bangladeshi University Perspective

M. A. Rafiq, Abir Mahamud Rabbi, Rasel Ahammad
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Abstract

In Bangladeshi institutions, the likelihood of student semester dropout has increased in recent years. A large number of university students, particularly in science background disciplines, are enrolled in a variety of undergraduate courses. Nevertheless, the perfection rate is poor. In general, students drop out for a variety of reasons, including academic, family, personal, and political concerns. The main focus of this study is to predict the risk of semester dropout in Bangladesh so that the massive dropout can be stopped. In this research, the current student information is preprocessed to discover the major reason as well as students whoever at the threat of semester dropout will help to grow a new structure in the area of higher education. To predict the dropout risk, random forest and logistic regression were practiced for obtaining the detection model.
用数据科学方法预测有学期退学风险的大学生:孟加拉大学视角
在孟加拉国的学校里,学生辍学的可能性近年来有所增加。大量的大学生,特别是理工科背景学科的学生,选修了各种各样的本科课程。然而,完美率很低。一般来说,学生退学的原因有很多,包括学业、家庭、个人和政治问题。本研究的主要重点是预测孟加拉国学期辍学的风险,从而阻止大规模的辍学。在本研究中,对当前学生信息进行预处理,以发现主要原因,以及那些面临学期退学威胁的学生将有助于在高等教育领域形成新的结构。为了预测辍学风险,使用随机森林和逻辑回归来获得检测模型。
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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