2021
DOI: 10.3991/ijoe.v17i11.25025
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Predicting Attack Surface Effects on Attack Vectors in an Open Congested Network Transmission Session by Machine Learning

Abstract: <p>This paper examined the impact of a network attack on a congested transmission session. The research is motivated by the fact that the previous research community has neglected to evaluate security issues related to network congestion environments, and has instead concentrated on resolving congestion issues only. At any point in time, attackers can take advantage of the congestion problem, exploit the attack surface, and inject attack vectors. In order to circumvent this issue, a machine learning algo… Show more

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