中学学生入学率的预测分析

Ana Lojić, Samed Jukic
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引用次数: 0

摘要

在确定某所高中的招生兴趣程度的研究中,对不同的数据进行分类和处理时,很少使用预测分析和比较模型。所有这些都导致中学入学率大幅波动,某些学校无法招收对某一特定领域感兴趣的众多学生。另一方面,学生们对某些学校失去了兴趣,这就导致了满足当今劳动力市场需要的某些课程的中断。负责组织教育过程的机构在分析不同领域小学生的才能和兴趣时,没有充分地将教学活动与非教学活动进行比较和联系。这项工作的目标是基于小学生在普通课堂上表达的结果,使用编程语言的分类器来预测中学学生的入学率。结果表明,随机森林预测器训练时的数据准确率为52%,而Wolfram Alpha训练时的数据准确率为62%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive analysis of student enrolment in secondary schools
In research to determine the degree of interest in enrolling students in certain high schools, predictive analysis and comparison models are rarely used when classifying and processing different data. All this leads to large fluctuations in enrolment in secondary schools, where certain schools are unable to enrol numerous students who show an interest in a particular field. On the other hand, students lose interest in certain schools, which leads to the discontinuation of certain courses necessary for the needs of today's labour market. Institutions responsible for organizing the educational process do not sufficiently compare and connect teaching and non-teaching activities when analysing the talents and interests of elementary school students from different fields. The goal of this work is to predict the enrolment of students in secondary schools, using the classifiers of programming languages, based on the results that students express during regular classes in elementary schools.The results show that the accuracy of the data during the training of the Random Forest predictor is 52%, while in Wolfram Alpha it is 62%
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