Identifying false positives when targeting students at risk of dropping out
Irene Eegdeman, Ilja Cornelisz, Martijn Meeter, Chris van Klaveren
Abstract
Inefficient targeting of students at risk of dropping out might explain why dropout-reducing efforts often have no or mixed effects. In this study, we present a new method which uses a series of machine learning algorithms to efficiently identify students at risk and makes the sensitivity/precision trade-off inherent in targeting students for dropout prevention explicit. Data of a Dutch vocational education institute is used to show how out-of-sample machine learning predictions can be used to formulate invitation rules in a way that targets students at risk more effectively, thereby facilitating early detection for effective dropout prevention.
Topics & Concepts
Dropout (neural networks)False positive paradoxComputer scienceVocational educationMachine learningSample (material)Mathematics educationAt-risk studentsPsychologyPedagogyChromatographyChemistryOnline Learning and Analytics