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Comparison study of Regression Models for the prediction of post-Graduation admissions using Machine Learning Techniques

机译:使用机器学习技术预测回归模型对毕业后录取的比较研究

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In today’s technological world, a student’s graduate performance plays a vital role in building either a net worthy career or opting different university for master’s studies. One simple wrong decision made while Shortlisting University without the knowledge of university ranking by a student can ruin an entire year of hard work and success. A poor university choice may conflict with the student’s inner gift and talent, wasting invested time and can cause confusion in choosing the right path and directions. Especially the student who is opting for a master’s degree based on their GRE/TOFEL score face real difficulty in choosing different research-based universities that need a high score in these exams. This study can help the student to take a measurable step towards selecting. Our study focuses on using analytics to propose a model for predicting the chance of admissions. This paper attempts to define different regression models and predict students’ chances of getting admissions. Prediction is performed using regression models, namely linear regression, ridge regressions, lasso, KNN, and elastic net regression, support vector machine, and few other regression models based on the available data. Further, our study explores two different sampling methods naming random forest and cross-validation sampling. All these regression methods are used to predict students’ chance of admitting to the University of their Interest based on their graduate performance. The best regression method is used to predict new unseen data.
机译:在今天的技术世界中,学生的研究生绩效在建立一个净有价值的职业或选择不同的硕士学位方面发挥着重要作用。一个简单的错误决定,而在没有大学的知识的情况下,学生的知识也可以毁了一整年的努力工作和成功。一个贫困的大学选择可能与学生内心的礼物和天赋相冲突,浪费投资时间,可能导致困惑选择正确的道路和方向。特别是根据他们的GRE / Tofel得分为硕士学位选择硕士学位,面对选择不同的基于研究的大学需要在这些考试中获得高分的真正困难。本研究可以帮助学生迈向选择可衡量的步骤。我们的研究侧重于使用分析来提出预测录取机会的模型。本文试图定义不同的回归模型,并预测学生获取入学机会。使用回归模型,即线性回归,脊回归,套索,knn和弹性网回归,支持向量机和基于可用数据的其他回归模型的预测进行预测。此外,我们的研究探讨了两个不同的采样方法命名随机林和交叉验证采样。所有这些回归方法都用于预测学生的机会,了解他们的历史表现。最佳回归方法用于预测新的未完成数据。

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