Enhanced PeerHunter: Detecting Peer-to-peer Botnets through Network-Flow Level Community Behavior Analysis
Di Zhuang, J. Morris Chang

TL;DR
Enhanced PeerHunter is a system that detects P2P botnets by analyzing network-flow community behaviors, demonstrating high detection accuracy and robustness against evasion tactics.
Contribution
It introduces a novel network-flow community behavior analysis approach for P2P botnet detection, including a detection component, community clustering, and robustness evaluation.
Findings
High detection rate with few false positives
Robust against evasion attacks
Effective community-based detection method
Abstract
Peer-to-peer (P2P) botnets have become one of the major threats in network security for serving as the fundamental infrastructure for various cyber-crimes. More challenges are involved in the problem of detecting P2P botnets, despite a few work claimed to detect centralized botnets effectively. We propose Enhanced PeerHunter, a network-flow level community behavior analysis based system, to detect P2P botnets. Our system starts from a P2P network flow detection component. Then, it uses "mutual contacts" to cluster bots into communities. Finally, it uses network-flow level community behavior analysis to detect potential botnets. In the experimental evaluation, we propose two evasion attacks, where we assume the adversaries know our techniques in advance and attempt to evade our system by making the P2P bots mimic the behavior of legitimate P2P applications. Our results showed that…
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