基于申请人特征和测试结果的哈萨克斯坦大学招生分类与预测

Aidana Kalakova, Yerasyl Amanbek, Rasul Kairgeldin, Gulsim Kalakova
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引用次数: 1

摘要

学生招生成为学校管理的重要组成部分。学院和大学对未来的学生感兴趣,他们可以进一步从机构和政府获得奖学金和其他经济支持。录取委员会可以根据许多因素来确定申请人,包括学生的GPA、文凭和考试成绩。在哈萨克斯坦,申请人的主要和最重要的考试是全国统一考试(UNT),这被认为是所有国立大学的主要选择标准。因此,对于参加模拟高考的学生来说,提前知道他被大学录取的机会是必要的。预测学生的入学情况对许多申请者来说是一个重要的话题,因为不清楚是否有可能以一定的成绩被大学录取。下面的工作旨在利用机器学习工具,根据不同的因素,包括UNT成绩,GPA,研究活动和其他一些标准,统计分析哈萨克斯坦学生入学的可预测性。学生入学可预测性的主要目的是帮助哈萨克斯坦高中的学生跟踪被国立大学录取的机会。此外,以下预测将帮助学生提前了解他们的录取机会,并相应地调整他们的准备策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification and prediction of Student’s Enrollment to Kazakhstanis Universities Using Characteristics of Applicant and Testing Results
Students' enrollments become an essential structure for academic management. Colleges and universities are interested in prospective students, who can further acquire scholarships and other financial support from institutions and the government. Many factors allow admission committees to identify the applicants with better parameters, including student’s GPA, diplomas and exam results. The main and the most important exam for applicants in Kazakhstan the Unified National Testing (UNT), which is considered as the primary selection criteria for all national universities. Therefore, it is necessary for a student who takes a mock UNT exam to know in advance his chance to get admitted to universities. Prediction of the student’s enrollment is a critical topic for many applicants because it is not clear whether it is possible to be admitted to the university with certain results. The following work aims to utilize machine learning tools to statistically analyze the predictability of Kazakhstan student’s enrollment according to the different factors, including UNT results, GPA, research activity, and some other criteria. The main aim of the predictability of the student’s enrollment is to help students from Kazakhstan’s high schools to track the chance of being enrolled by national universities. Besides, the following prediction will help students to know their chances of admission in advance and adjust their preparation strategy accordingly.
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