Predicting Graduate Student Success in an MBA Program: Regression Versus Classification

The decision to accept a student into a graduate program is a difficult one, based upon many factors that are used to predict the success of the applicant. Typically, regression analysis has been used to develop a prediction mechanism. Unfortunately, as is shown in this article, these regression mod...

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Veröffentlicht in:Educational and psychological measurement 1995-04, Vol.55 (2), p.186-195
Hauptverfasser: Wilson, Rick L., Hardgrave, Bill C.
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container_title Educational and psychological measurement
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creator Wilson, Rick L.
Hardgrave, Bill C.
description The decision to accept a student into a graduate program is a difficult one, based upon many factors that are used to predict the success of the applicant. Typically, regression analysis has been used to develop a prediction mechanism. Unfortunately, as is shown in this article, these regression models can be ineffective in predicting success or failure. This article evaluates the ability of different models, including the classification techniques of discriminant analysis, logistic regression, and neural networks, to predict the academic success of MBA students. The conclusions of this study are that (a) classification techniques may be an appropriate approach to the problem, (b) predicting success and failure of graduate students is difficult using only the typical data describing the subjects, and (c) nonparametric procedures, such as neural networks, perform at least as well as traditional methods and are worthy of further investigation.
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source SAGE Complete; Periodicals Index Online
subjects Academic Achievement
Biological and medical sciences
Business Administration
Business education
Classification
Discriminant Analysis
Educational psychology
Fundamental and applied biological sciences. Psychology
Graduate Students
Graduate studies
Graduate Study
Masters Degrees
Neural Networks
Nonparametric Statistics
Probability
Psychology. Psychoanalysis. Psychiatry
Psychology. Psychophysiology
Pupil and student. Academic achievement and failure
Regression (Statistics)
title Predicting Graduate Student Success in an MBA Program: Regression Versus Classification
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