5,030 research outputs found
Mining Unclassified Traffic Using Automatic Clustering Techniques
In this paper we present a fully unsupervised algorithm to identify classes of traffic inside an aggregate. The algorithm leverages on the K-means clustering algorithm, augmented with a mechanism to automatically determine the number of traffic clusters. The signatures used for clustering are statistical representations of the application layer protocols. The proposed technique is extensively tested considering UDP traffic traces collected from operative networks. Performance tests show that it can clusterize the traffic in few tens of pure clusters, achieving an accuracy above 95%. Results are promising and suggest that the proposed approach might effectively be used for automatic traffic monitoring, e.g., to identify the birth of new applications and protocols, or the presence of anomalous or unexpected traffi
A First Look at the Crypto-Mining Malware Ecosystem: A Decade of Unrestricted Wealth
Illicit crypto-mining leverages resources stolen from victims to mine
cryptocurrencies on behalf of criminals. While recent works have analyzed one
side of this threat, i.e.: web-browser cryptojacking, only commercial reports
have partially covered binary-based crypto-mining malware. In this paper, we
conduct the largest measurement of crypto-mining malware to date, analyzing
approximately 4.5 million malware samples (1.2 million malicious miners), over
a period of twelve years from 2007 to 2019. Our analysis pipeline applies both
static and dynamic analysis to extract information from the samples, such as
wallet identifiers and mining pools. Together with OSINT data, this information
is used to group samples into campaigns. We then analyze publicly-available
payments sent to the wallets from mining-pools as a reward for mining, and
estimate profits for the different campaigns. All this together is is done in a
fully automated fashion, which enables us to leverage measurement-based
findings of illicit crypto-mining at scale. Our profit analysis reveals
campaigns with multi-million earnings, associating over 4.4% of Monero with
illicit mining. We analyze the infrastructure related with the different
campaigns, showing that a high proportion of this ecosystem is supported by
underground economies such as Pay-Per-Install services. We also uncover novel
techniques that allow criminals to run successful campaigns.Comment: A shorter version of this paper appears in the Proceedings of 19th
ACM Internet Measurement Conference (IMC 2019). This is the full versio
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