DocumentCode :
3667034
Title :
Network Connectivity Graph for Malicious Traffic Dissection
Author :
Enrico Bocchi;Luigi Grimaudo;Marco Mellia;Elena Baralis;Sabyasachi Saha;Stanislav Miskovic;Gaspar Modelo-Howard;Sung-Ju Lee
fYear :
2015
Firstpage :
1
Lastpage :
9
Abstract :
Malware is a major threat to security and privacy of network users. A huge variety of malware typically spreads over the Internet, evolving every day, and challenging the research community and security practitioners to improve the effectiveness of countermeasures. In this paper, we present a system that automatically extracts patterns of network activity related to a specific malicious event, i.e., a seed. Our system is based on a methodology that correlates network events of hosts normally connected to the Internet over (i) time (i.e., analyzing different samples of traffic from the same host), (ii) space (i.e., correlating patterns across different hosts), and (iii) network layers (e.g., HTTP, DNS, etc.). The result is a Network Connectivity Graph that captures the overall "network behavior" of the seed. That is a focused and enriched representation of the malicious pattern infected hosts exhibit, purified from ordinary network activities and background traffic. We applied our approach on a large dataset collected in a real commercial ISP where the aggregated traffic produced by more than 20,000 households has been monitored. A commercial IDS has been used to complement network data with alerts related to malicious activities. We use such alerts to trigger our processing system. Results shows that the richness of the Network Connectivity Graph provides a much more detailed picture of malicious activities, considerably enhancing our understanding.
Keywords :
"IP networks","Servers","Itemsets","Malware","Monitoring","Protocols"
Publisher :
ieee
Conference_Titel :
Computer Communication and Networks (ICCCN), 2015 24th International Conference on
ISSN :
1095-2055
Type :
conf
DOI :
10.1109/ICCCN.2015.7288435
Filename :
7288435
Link To Document :
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