Title
Phoenix: Dga-Based Botnet Tracking And Intelligence
Abstract
Modern botnets rely on domain-generation algorithms (DGAs) to build resilient command-and-control infrastructures. Given the prevalence of this mechanism, recent work has focused on the analysis of DNS traffic to recognize botnets based on their DGAs. While previous work has concentrated on detection, we focus on supporting intelligence operations. We propose Phoenix, a mechanism that, in addition to telling DGA- and non-DGA-generated domains apart using a combination of string and IP-based features, characterizes the DGAs behind them, and, most importantly, finds groups of DGA-generated domains that are representative of the respective botnets. As a result, Phoenix can associate previously unknown DGA-generated domains to these groups, and produce novel knowledge about the evolving behavior of each tracked botnet. We evaluated Phoenix on 1,153,516 domains, including DGA-generated domains from modern, well-known botnets: without supervision, it correctly distinguished DGA- vs. non-DGA-generated domains in 94.8 percent of the cases, characterized families of domains that belonged to distinct DGAs, and helped researchers "on the field" in gathering intelligence on suspicious domains to identify the correct botnet.
Year
DOI
Venue
2014
10.1007/978-3-319-08509-8_11
DETECTION OF INTRUSIONS AND MALWARE, AND VULNERABILITY ASSESSMENT, DIMVA 2014
Field
DocType
Volume
Domain generation algorithm,Computer science,Botnet,Computer security,Bipartite graph,Phoenix,DBSCAN
Conference
8550
ISSN
Citations 
PageRank 
0302-9743
47
1.58
References 
Authors
16
4
Name
Order
Citations
PageRank
Stefano Schiavoni1552.21
Federico Maggi252437.68
Lorenzo Cavallaro388652.85
Stefano Zanero473653.78