Litcius/Paper detail

Early Prediction of University Dropouts – A Random Forest Approach

Andreas Behr, Marco Giese, Hervé D. Teguim K., Katja Theune

2020Jahrbücher für Nationalökonomie und Statistik53 citationsDOI

Abstract

Abstract We predict university dropout using random forests based on conditional inference trees and on a broad German data set covering a wide range of aspects of student life and study courses. We model the dropout decision as a binary classification (graduate or dropout) and focus on very early prediction of student dropout by stepwise modeling students’ transition from school (pre-study) over the study-decision phase (decision phase) to the first semesters at university (early study phase). We evaluate how predictive performance changes over the three models, and observe a substantially increased performance when including variables from the first study experiences, resulting in an AUC (area under the curve) of 0.86. Important predictors are the final grade at secondary school, and also determinants associated with student satisfaction and their subjective academic self-concept and self-assessment. A direct outcome of this research is the provision of information to universities wishing to implement early warning systems and more personalized counseling services to support students at risk of dropping out during an early stage of study.

Topics & Concepts

Dropout (neural networks)Random forestGermanPsychologyInferenceDecision treeOutcome (game theory)Predictive modellingMedical educationComputer scienceMathematics educationMachine learningArtificial intelligenceMathematicsMedicineGeographyMathematical economicsArchaeologyOnline Learning and Analytics