Predictive Network Intrusion Identification & Mitigation Model Using Deep Learning In E-Learning

Predictive Network Intrusion Identification & Mitigation Model Using Deep Learning In E-Learning

Authors

  • Samuel M. Musyimi 1Jomo Kenyatta University of Agriculture and Technology, Kenya
  • Waweru Mwangi Jomo Kenyatta University of Agriculture &Technology, Kenya
  • Dennis Njagi Jomo Kenyatta University of Agriculture &Technology, Kenya

Keywords:

Predictive, Identification, E-Learning, Deep Learning, TensorFlow, Gans

Abstract

The world of Information-technology has advanced quickly in recent years and network services have extended throughout all industries. Internet Technology has changed traditional teaching techniques and developed versatile E-learning models. E-learning models are a great achievement but are vulnerable to cyber-attacks such as Denial-of-Service (DoS). The aim of the study is to develop a predictive network intrusion identification and a mitigation model using deep learning in e-learning.  The research adopts an anomaly detection methodology. The research datasets consist of 47,645 instances. These instances were divided into training datasets and test datasets in the ratio of 80:20 respectively. Deep learning was applied to develop the prediction model. Generative Adversarial Networks (GANs) and Binary classification was used for augmenting and artificial instance generation. The developed model was able to detect network intrusion with a prediction accuracy of 99.8%. The results of this study can be applied to respond to the ever-evolving attacks in e-learning platforms to improve data security and protection.

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Published

2023-07-11

How to Cite

Musyimi, S. M., Mwangi, W., & Njagi, D. (2023). Predictive Network Intrusion Identification & Mitigation Model Using Deep Learning In E-Learning . Journal of the Kenya National Commission for UNESCO, 3(1). Retrieved from https://journals.unesco.go.ke/index.php/jknatcom/article/view/32

Issue

Section

Education
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