Comparative Analysis of Machine Learning and Deep Learning Algorithms for University Dropout: An Aproach Since CRISP-DM Interactive Pipeline
Abstract:
This study conducts a comparative analysis of machine learning and deep learning algorithms to predict university dropout rates. Using a dataset from a university, specifically Tecnológico de Monterrey in Mexico, we establish a interactive pipeline base on CRISP-DM and several platforms and techniques to evaluate algorithms including TabNet, LSTM, Logistic Regression, and SVM. The goal is to identify the most effective model in accurately predicting potential dropout cases. The results show that the proposal pipeline contributes to algorithms achieving the highest accuracy, for instance TabNet reaching 97% of accuracy. This indicates its effectiveness in recognizing patterns associated with dropout risks linked to academic performance and economic resources. The comparative analysis highlights the strengths and weaknesses of each algorithm in handling the complexities of university dropout prediction, providing insights for future research and application in educational settings to student dropout prediction.
Año de publicación:
2025
Keywords:
- CRISP-DM
- Deep learning
- logistic regression
- LSTM
- Machine Learning
- Predictive Algorithms
- Student Dropout Prediction
- SVM
- TabNet
Fuente:
scopusTipo de documento:
Other
Estado:
Acceso restringido
Áreas de conocimiento:
- Aprendizaje automático
- Algoritmo
Áreas temáticas de Dewey:
- Métodos informáticos especiales
- Educación superior
- Ciencias de la computación
Objetivos de Desarrollo Sostenible:
- ODS 9: Industria, innovación e infraestructura
- ODS 17: Alianzas para lograr los objetivos
- ODS 8: Trabajo decente y crecimiento económico