Characterizing Certain DNS DDoS Attacks

05/23/2019
by   Renée Burton, et al.
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This paper details data science research in the area of Cyber Threat Intelligence applied to a specific type of Distributed Denial of Service (DDoS) attack. We study a DDoS technique prevalent in the Domain Name System (DNS) for which little malware have been recovered. Using data from a globally distributed set of a passive collectors (pDNS), we create a statistical classifier to identify these attacks and then use unsupervised learning to investigate the attack events and the malware that generates them. The first known major study of this technique, we discovered that current attacks have little resemblance to published descriptions and identify several previously unpublished features of the attacks. Through a combination of text and time series features, we are able to characterize the dominant malware and demonstrate that the number of global-scale attack systems is relatively small.

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