Computer Science – Artificial Intelligence
Scientific paper
2010-06-08
Proceedings of the 2nd International Conference on Emerging Security Information, Systems and Technologies, Cap Esterel, Franc
Computer Science
Artificial Intelligence
7 pages, 4 figures, 1 table, 2nd International Conference on Emerging Security Information, Systems and Technologies,
Scientific paper
A new emerging paradigm of Uncertain Risk of Suspicion, Threat and Danger, observed across the field of information security, is described. Based on this paradigm a novel approach to anomaly detection is presented. Our approach is based on a simple yet powerful analogy from the innate part of the human immune system, the Toll-Like Receptors. We argue that such receptors incorporated as part of an anomaly detector enhance the detector's ability to distinguish normal and anomalous behaviour. In addition we propose that Toll-Like Receptors enable the classification of detected anomalies based on the types of attacks that perpetrate the anomalous behaviour. Classification of such type is either missing in existing literature or is not fit for the purpose of reducing the burden of an administrator of an intrusion detection system. For our model to work, we propose the creation of a taxonomy of the digital Acytota, based on which our receptors are created.
Aickelin Uwe
Feyereisl Jan
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