DocumentCode :
3657106
Title :
Segugio: Efficient Behavior-Based Tracking of Malware-Control Domains in Large ISP Networks
Author :
Babak Rahbarinia;Roberto Perdisci;Manos Antonakakis
fYear :
2015
fDate :
6/1/2015 12:00:00 AM
Firstpage :
403
Lastpage :
414
Abstract :
In this paper, we propose Segugio, a novel defense system that allows for efficiently tracking the occurrence of new malware-control domain names in very large ISP networks. Segugio passively monitors the DNS traffic to build a machine-domain bipartite graph representing who is querying what. After labelling nodes in this query behavior graph that are known to be either benign or malware-related, we propose a novel approach to accurately detect previously unknown malware-control domains. We implemented a proof-of-concept version of Segugio and deployed it in large ISP networks that serve millions of users. Our experimental results show that Segugio can track the occurrence of new malware-control domains with up to 94% true positives (TPs) at less than 0.1% false positives (FPs). In addition, we provide the following results: (1) we show that Segugio can also detect control domains related to new, previously unseen malware families, with 85% TPs at 0.1% FPs, (2) Segugio´s detection models learned on traffic from a given ISP network can be deployed into a different ISP network and still achieve very high detection accuracy, (3) new malware-control domains can be detected days or even weeks before they appear in a large commercial domain name blacklist, and (4) we show that Segugio clearly outperforms Notos, a previously proposed domain name reputation system.
Keywords :
"Malware","IP networks","Monitoring","Noise","Accuracy","Servers","Training"
Publisher :
ieee
Conference_Titel :
Dependable Systems and Networks (DSN), 2015 45th Annual IEEE/IFIP International Conference on
Type :
conf
DOI :
10.1109/DSN.2015.35
Filename :
7266868
Link To Document :
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