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A Comparison of Regression Models for Prediction of Graduate Admissions

机译:研究生入学预测的回归模型比较

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Prospective graduate students always face a dilemma deciding universities of their choice while applying to master's programs. While there are a good number of predictors and consultancies that guide a student, they aren't always reliable since decision is made on the basis of select past admissions. In this paper, we present a Machine Learning based method where we compare different regression algorithms, such as Linear Regression, Support Vector Regression, Decision Trees and Random Forest, given the profile of the student. We then compute error functions for the different models and compare their performance to select the best performing model. Results then indicate if the university of choice is an ambitious or a safe one.
机译:准研究生在申请硕士学位课程时总是面临两难选择的抉择。尽管有大量的预测指标和顾问可以指导学生,但由于根据以往的入学选择来做出决定,因此它们并不总是可靠的。在本文中,我们提出了一种基于机器学习的方法,在给定学生档案的情况下,我们将比较不同的回归算法,例如线性回归,支持向量回归,决策树和随机森林。然后,我们为不同的模型计算误差函数,并比较它们的性能以选择性能最佳的模型。然后,结果表明所选的大学是雄心勃勃还是安全的大学。

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