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A hybrid approach for early-identification of at-risk dropout students using LSTM-DNN networks
Dropout refers to the phenomenon of students leaving school before completing their degree or program of study. Dropout is a major concern for educational institutions, as it affects not only the students themselves but also the institutions’ reputation and funding. Dropout can occur for a variety o...
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Published in: | Education and information technologies 2024-10, Vol.29 (14), p.18839-18857 |
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creator | El Aouifi, Houssam El Hajji, Mohamed Es-Saady, Youssef |
description | Dropout refers to the phenomenon of students leaving school before completing their degree or program of study. Dropout is a major concern for educational institutions, as it affects not only the students themselves but also the institutions’ reputation and funding. Dropout can occur for a variety of reasons, including academic, financial, personal, and social factors. Therefore, understanding the factors that contribute to dropout and developing effective strategies to prevent it is a critical challenge for educational institutions. In this study, we propose a hybrid deep learning model based on Long Short-Term Memory and Deep Neural Network algorithms for school dropout prediction. The proposed model was compared with previous works and several other machine learning algorithms, including Deep Neural Network (DNN), K-Nearest Neighbors (KNN), Naive Bayes (NB), Multi-Layer Perceptron (MLP), Decision Trees (DT), Support Vector Machine (SVM), and Random Forest (RF). The results showed that the proposed DNN-LSTM model outperforms the other models in terms of accuracy and efficiency. |
doi_str_mv | 10.1007/s10639-024-12588-0 |
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subjects | Algorithms At risk students Computer Appl. in Social and Behavioral Sciences Computer Science Computers and Education Dropout Prevention Education Educational Technology Information Systems Applications (incl.Internet) Neural networks Short Term Memory User Interfaces and Human Computer Interaction |
title | A hybrid approach for early-identification of at-risk dropout students using LSTM-DNN networks |
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