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SEFI conference, Date: 2018/09/17 - 2018/09/21, Location: Copenhagen, Denmark

Publication date: 2018-10-02
Volume: 46 Pages: 322 - 329
ISSN: 978-2-87352-016-8
Publisher: SEFI - Société Européenne pour la Formation des Ingénieurs

Proceedings of the 46th SEFI Annual Conference 2018

Author:

De Laet, Tinne
Mothilal, Ramaravind Kommiya ; Broos, Tom ; Pinxten, Maarten

Abstract:

First-year student success in Engineering Bachelor programs is well-studied. Both traditional statistical modelling and machine learning approaches have been used to study what makes students successful. While statistical modelling helps to obtain population-wide patterns, they often fail to create accurate predictions for individual students. Predictive machine learning algorithms can create accurate predictions but often fail to create interpretable insights. This paper compares a statistical modelling and machine learning approach for predicting first-year student success. The case study focuses on first-year Bachelor of Engineering Science students from KU Leuven between 2015-2017 and relates first-semester academic achievement to prior education, learning and study strategies, effort level, and preference for time pressure.