Abstract
This research proposes novel techniques in cyber security risk management and attack detection frameworks using deep learning architectures. Here the risk management of physical networks has been analysed using multi connect variational auto-encoder. Risk values were included in an ISMS (information security management system) as well a quantitative risk assessment was undertaken. According to the quantitative analysis, the proposed remedies could lower risk. Then the cyber attacks in the network were detected using probabilistic Bayesian networks. Performance of deep model is compared to that of a traditional ML method, and detection of distributed attacks is compared to that of a centralised system. According to tests, our distributed attack detection system beats centralised DL-based detection systems. For UNBS-NB-15 dataset, proposed MCVAE_PBNN achieved Accuracy of 96%, False Alarm Rate (FAR) of 71%, Sensitivity of 92%, Specificity of 82%, False positive rate (FPR) of 63%, AUC of 75% and KDD99 dataset proposed MCVAE_PBNN achieved Accuracy of 95%, False Alarm Rate (FAR) of 68%, Sensitivity of 92%, Specificity of 84%, False positive rate (FPR) of 61%, AUC of 78%.
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CITATION STYLE
Mouti, S., Shukla, S. K., Althubiti, S. A., Ahmed, M. A., Alenezi, F., & Arumugam, M. (2022). Cyber Security Risk management with attack detection frameworks using multi connect variational auto-encoder with probabilistic Bayesian networks. Computers and Electrical Engineering, 103. https://doi.org/10.1016/j.compeleceng.2022.108308
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