Publication | Closed Access
Detection of Denial of Service Attacks in Communication Networks
35
Citations
37
References
2020
Year
Unknown Venue
EngineeringMachine LearningCyber AttacksInformation SecurityNetwork AnalysisData ScienceData MiningPattern RecognitionVarious Bls ModelsDenial-of-service AttackDdos DetectionIntrusion Detection SystemThreat DetectionService Cyber AttacksComputer ScienceAttack GraphNetwork ScienceIntrusion DetectionBotnet DetectionService Attacks
Detection of evolving cyber attacks is a challenging task for conventional network intrusion detection techniques. Various supervised machine learning algorithms have been implemented in network intrusion detection systems. However, traditional algorithms require long training time and have high computational complexity. Therefore, we propose detection of denial of service cyber attacks in communication networks by employing the broad learning system (BLS) that requires shorter training time while achieving comparable performance. Because designing effective detection systems relies on training and test datasets that contain anomalous network traffic data, in this paper we evaluate the performance of various BLS models by using recently generated network intrusion datasets. The best accuracy and F-Score were often achieved using BLS with cascades while BLS with incremental learning usually required shorter training time.
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