TY - JOUR
T1 - Analyzing Attrition
T2 - 2024 ASEE Annual Conference and Exposition
AU - Saavedra-Acuna, Cristian
AU - Quezada-Espinoza, Monica
AU - Correa, Danilo Alberto Gomez
N1 - Publisher Copyright:
© American Society for Engineering Education, 2024.
PY - 2024/6/23
Y1 - 2024/6/23
N2 - This Complete Research develops a predictive model to elucidate factors affecting dropout rates in the first two years of tertiary education, using data from 1266 students at a School of Engineering in Chile. Focusing on socio-demographic variables from an institutional survey, such as family background, economic status, and employment, the study employs a quantitative, non-experimental methodology alongside Machine Learning techniques within a Knowledge Discovery in Databases (KDD) framework. Of the methods tested, including Neural Networks (NN), K-Nearest Neighbor (KNN), Naive Bayes (NB), Decision Tree (DT), and Logistic Regression (LR), the NN model proved most effective, demonstrating high Accuracy, Sensitivity, and Specificity (all above 0.7). A Weight-Based Feature Importance analysis identified economic factors, family composition, and social relationships as the top variables impacting dropout. This research enhances our understanding of factors influencing student attrition in the School of Engineering. The model acts as an early alert system, identifying potential dropouts and at-risk student groups before they commence their studies. Consequently, it allows the implementation of early interventions, such as financial support, improved study methods, and professional counseling, thereby significantly reducing dropout rates and improving student success.
AB - This Complete Research develops a predictive model to elucidate factors affecting dropout rates in the first two years of tertiary education, using data from 1266 students at a School of Engineering in Chile. Focusing on socio-demographic variables from an institutional survey, such as family background, economic status, and employment, the study employs a quantitative, non-experimental methodology alongside Machine Learning techniques within a Knowledge Discovery in Databases (KDD) framework. Of the methods tested, including Neural Networks (NN), K-Nearest Neighbor (KNN), Naive Bayes (NB), Decision Tree (DT), and Logistic Regression (LR), the NN model proved most effective, demonstrating high Accuracy, Sensitivity, and Specificity (all above 0.7). A Weight-Based Feature Importance analysis identified economic factors, family composition, and social relationships as the top variables impacting dropout. This research enhances our understanding of factors influencing student attrition in the School of Engineering. The model acts as an early alert system, identifying potential dropouts and at-risk student groups before they commence their studies. Consequently, it allows the implementation of early interventions, such as financial support, improved study methods, and professional counseling, thereby significantly reducing dropout rates and improving student success.
KW - AI
KW - data mining
KW - dropout
KW - engineering
KW - first-year students
KW - higher education
UR - http://www.scopus.com/inward/record.url?scp=85202077263&partnerID=8YFLogxK
M3 - Conference article
AN - SCOPUS:85202077263
SN - 2153-5965
JO - ASEE Annual Conference and Exposition, Conference Proceedings
JF - ASEE Annual Conference and Exposition, Conference Proceedings
Y2 - 23 June 2024 through 26 June 2024
ER -