Novelty-aware attack recognition – intrusion detection with organic computing techniques

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Abstract

A typical task of intrusion detection systems is to detect known kinds of attacks by analyzing network traffic. In this article, we will take a step forward and enable such a system to recognize very new kinds of attacks by means of novelty-awareness mechanisms. That is, an intrusion detection system will be able to recognize deficits in its own knowledge and to react accordingly. It will present a learned rule premise to the system administrator which will then be labeled, i. e., extended by an appropriate conclusion. In this article, we present new techniques for novelty-aware attack recognition based on probabilistic rule modeling techniques and demonstrate how these techniques can successfully be applied to intrusion benchmark data. The proposed novelty-awareness techniques may also be used in other application fields by intelligent technical systems (e. g., organic computing systems) to resolve problems with knowledge deficits in a self-organizing way.

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Fisch, D., Kastl, F., & Sick, B. (2010). Novelty-aware attack recognition – intrusion detection with organic computing techniques. In IFIP Advances in Information and Communication Technology (Vol. 329, pp. 242–253). Springer New York LLC. https://doi.org/10.1007/978-3-642-15234-4_24

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