Hanan Hindy, Elike Hodo, Ethan Bayne, A. Seeam, Robert C. Atkinson, X. Bellekens
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A Taxonomy of Malicious Traffic for Intrusion Detection Systems
With the increasing number of network threats it is essential to have a knowledge of existing and new network threats in order to design better intrusion detection systems. In this paper we propose a taxonomy for classifying network attacks in a consistent way, allowing security researchers to focus their efforts on creating accurate intrusion detection systems and targeted datasets.