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Predicting student dropout: A machine learning approach

Lorenz Kemper, Gerrit Vorhoff, Berthold U. Wigger

2020European Journal of Higher Education184 citationsDOI

Abstract

We perform two approaches of machine learning, logistic regressions and decision trees, to predict student dropout at the Karlsruhe Institute of Technology (KIT). The models are computed on the basis of examination data, i.e. data available at all universities without the need of specific collection. Therefore, we propose a methodical approach that may be put in practice with relative ease at other institutions. We find decision trees to produce slightly better results than logistic regressions. However, both methods yield high prediction accuracies of up to 95% after three semesters. A classification with more than 83% accuracy is already possible after the first semester.

Topics & Concepts

Dropout (neural networks)Logistic regressionMachine learningDecision treeComputer scienceArtificial intelligenceHigher educationYield (engineering)Mathematics educationStatisticsPsychologyMathematicsMaterials scienceLawMetallurgyPolitical scienceOnline Learning and AnalyticsReliability and Agreement in MeasurementSoftware System Performance and Reliability
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