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Classification method at acceptance of new student at public university on the national written test

机译:在公立大学对国家书面测试中接受新学生的分类方法

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Acceptance of new students at public universities through the national written test is based on the total score and the capacity of the study program.This causes the study program accepts several students who have low scores on the main subject of the study program.The purpose of this study is to find the best method in predicting the probability of being accepted on the national written test and find the minimum score for each subject that must be achieved by participants to be accepted at a public university.There are two classification methods in statistics that are studied to overcome this problem, i.e.logistic regression and random forest.The results showed that the best logistic regression model had an accuracy of 97.11 percent, whereas the random forest method had an accuracy of 96.59 percent.Furthermore, the minimum score for each subject was developed based on the univariate logistic regression model.
机译:通过国家书面测试接受公共大学的新学生是基于学习计划的总分和能力。这使得研究计划接受了几个在研究计划的主要科目中具有低得分的学生。本研究要找到最佳方法,以预测国家书面测试所接受的概率,并找到必须在公共大学接受的参与者可以获得的每个主题的最低分数。统计数据有两种分类方法研究了克服了这个问题,Ielogistic回归和随机森林。结果表明,最佳逻辑回归模型的准确性为97.11%,而随机森林方法的准确性为96.59%。繁殖,每个主题的最低分数是基于单变量逻辑回归模型开发的。

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