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Predicting Dropout for Nontraditional Undergraduate Students: A Machine Learning Approach

Authors :
Ruth Raim
Huade Huo
Zoe Padgett
Jijun Zhang
Sarah Hein
Mark Ossolinski
Jiashan Cui
Source :
Journal of College Student Retention: Research, Theory & Practice. 24:1054-1077
Publication Year :
2020
Publisher :
SAGE Publications, 2020.

Abstract

Student attrition represents one of the greatest challenges facing U.S. postsecondary institutions. Approximately 40 percent of students seeking a bachelor’s degree do not graduate within 6 years; among nontraditional students, who make up half of the undergraduate population, dropout rates are even higher. In this study, we developed a machine learning classifier using the XGBoost model and data from the National Center for Education Statistics (NCES) Beginning Postsecondary Students (BPS) Longitudinal Study: 2012/14 to predict nontraditional student dropout. In comparison with baseline models, the XGBoost model and logistic regression model with features identified by the XGBoost model displayed superior performance in predicting dropout. The predictive ability of the model and the features it identified as being most important in predicting nontraditional student dropout can inform discussion among educators seeking ways to identify and support at-risk students early in their postsecondary careers.

Details

ISSN :
15414167 and 15210251
Volume :
24
Database :
OpenAIRE
Journal :
Journal of College Student Retention: Research, Theory & Practice
Accession number :
edsair.doi...........863ed588b2f5abe02cc57bfdd6f89a52