Enhanced E-learning through Neural Network Based Cloud Data Extraction

Authors

  • Abubaker Mossbah Alfurjani Department of Computer Science, Faculty of Arts and Sciences Al-shaqeeqah, University of Gharyan, Libya
  • Ibrahim Saleh Mansour Department of Computer Science, Faculty of Arts and Sciences Al-shaqeeqah, University of Gharyan, Libya

Keywords:

e-learning, data mining, neural networks, precision, recall, F-1-score

Abstract

In light of the aspiration to achieve sustainability in the field of education, especially after the development of artificial intelligence technologies in general and artificial neural network technologies in particular, the process of improving e-learning has become one of the most important strategies for achieving sustainability. This study aims to evaluate the impact of using artificial intelligence techniques and artificial neural networks on improving cloud e-learning by extracting and mining data from the electronic cloud and analyzing it to provide a more efficient and effective educational experience. Through several methodologies, including descriptive methodology to describe the factors influencing the improvement of machine learning through the use of artificial intelligence techniques and the mechanism for using these techniques, quantitative methodology was used in collecting data and analytical scientific methodology to analyze the results of the proposed model, which is a hybrid of convolutional artificial neural networks (CNN) and recursive neural networks (RNN). Through the model, it is possible to extract and analyze user data such as interaction with content and duration of study to extract patterns and behaviors that support improving the learning experience, and personalizing individual learning paths. Predicting the academic performance of students using machine learning techniques. The results showed an improvement in the learning experience of 86% and an improvement in platform performance of 85%. Machine learning indicators, such as accuracy (94%), recall (93%) and f1 score (91%), also indicated the success of the model used in improving.

Dimensions

Published

2025-02-18

How to Cite

Abubaker Mossbah Alfurjani, & Ibrahim Saleh Mansour. (2025). Enhanced E-learning through Neural Network Based Cloud Data Extraction. African Journal of Advanced Pure and Applied Sciences (AJAPAS), 4(1), 281–292. Retrieved from https://aaasjournals.com/index.php/ajapas/article/view/1149