Publication | Closed Access
Detecting Denial of Service Attacks with Bayesian Classifiers and the Random Neural Network
66
Citations
16
References
2007
Year
Bayesian Decision TheoryEngineeringMachine LearningInformation SecurityDos AttacksHardware SecurityData ScienceData MiningDenial-of-service AttackDos AttackDdos DetectionIntrusion Detection SystemThreat DetectionComputer ScienceProbability TheoryDeep LearningBayesian ClassifiersBotnet DetectionNetwork Traffic MeasurementRandom Neural NetworkService Attacks
Denial of service (DoS) is a prevalent threat in today's networks. While such an attack is not difficult to launch, defending a network resource against it is disproportionately difficult, and despite the extensive research in recent years, DoS attacks continue to harm. The first goal of any protection scheme against DoS is the detection of its existence, ideally long before the destructive traffic build-up. In this paper we propose a generic approach which uses multiple Bayesian classifiers, and we present and compare four different implementations of it, combining likelihood estimation and the random neural network (RNN). The RNNs are biologically inspired structures which represent the true functioning of a biophysical neural network, where the signals travel as spikes rather than analog signals. We use such an RNN structure to fuse real-time networking statistical data and distinguish between normal and attack traffic during a DoS attack. We present experimental results obtained for different traffic data in a large networking testbed.
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