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Predicting Student’s Dropout Data in Higher Education using Neural Network


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1 National University of Political Studies and Public Administration Bucharest Romania, Romania
     

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The biggest downside to higher education is that once enrolled, academic performance is poor. Neural networks are also used to predict the success of MBA students. The authors use a three-layer neural network to divide MBA program applicants into groups of successful and marginal students who support undergraduates' touchstone, undergraduate major, age, and GMAT scores. They got overall prediction accuracy for their model at 89. To assess the ability of neural networks to classify students, the authors compared the results obtained using neural networks to log it and probit regression models. The ability to predict student performance is very useful for college officials who require early action to prevent dropouts.

Keywords

Higher Education, Neural Networks, Prediction.
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  • Predicting Student’s Dropout Data in Higher Education using Neural Network

Abstract Views: 231  |  PDF Views: 1

Authors

R Dragoescu
National University of Political Studies and Public Administration Bucharest Romania, Romania
D Teodorescu
National University of Political Studies and Public Administration Bucharest Romania, Romania

Abstract


The biggest downside to higher education is that once enrolled, academic performance is poor. Neural networks are also used to predict the success of MBA students. The authors use a three-layer neural network to divide MBA program applicants into groups of successful and marginal students who support undergraduates' touchstone, undergraduate major, age, and GMAT scores. They got overall prediction accuracy for their model at 89. To assess the ability of neural networks to classify students, the authors compared the results obtained using neural networks to log it and probit regression models. The ability to predict student performance is very useful for college officials who require early action to prevent dropouts.

Keywords


Higher Education, Neural Networks, Prediction.