1,329 research outputs found
Botnet Detection using Social Graph Analysis
Signature-based botnet detection methods identify botnets by recognizing
Command and Control (C\&C) traffic and can be ineffective for botnets that use
new and sophisticate mechanisms for such communications. To address these
limitations, we propose a novel botnet detection method that analyzes the
social relationships among nodes. The method consists of two stages: (i)
anomaly detection in an "interaction" graph among nodes using large deviations
results on the degree distribution, and (ii) community detection in a social
"correlation" graph whose edges connect nodes with highly correlated
communications. The latter stage uses a refined modularity measure and
formulates the problem as a non-convex optimization problem for which
appropriate relaxation strategies are developed. We apply our method to
real-world botnet traffic and compare its performance with other community
detection methods. The results show that our approach works effectively and the
refined modularity measure improves the detection accuracy.Comment: 7 pages. Allerton Conferenc
Network traffic analysis for threats detection in the Internet of Things
As the prevalence of the Internet of Things (IoT) continues to increase, cyber criminals are quick to exploit the security gaps that many devices are inherently designed with. Users cannot be expected to tackle this threat alone, and many current solutions available for network monitoring are simply not accessible or can be difficult to implement for the average user, which is a gap that needs to be addressed. This article presents an effective signature-based solution to monitor, analyze, and detect potentially malicious traffic for IoT ecosystems in the typical home network environment by utilizing passive network sniffing techniques and a cloud application to monitor anomalous activity. The proposed solution focuses on two attack and propagation vectors leveraged by the infamous Mirai botnet, namely DNS and Telnet. Experimental evaluation demonstrates the proposed solution can detect 98.35 percent of malicious DNS traffic and 99.33 percent of Telnet traffic for an overall detection accuracy of 98.84 percent
- …