CRNISIFeb 23, 2018

Enhanced PeerHunter: Detecting Peer-to-peer Botnets through Network-Flow Level Community Behavior Analysis

arXiv:1802.08386v342 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of detecting P2P botnets for network security, but it appears incremental as it builds on prior methods like PeerHunter with enhancements.

The paper tackles the problem of detecting peer-to-peer botnets, which are major threats in network security, by proposing Enhanced PeerHunter, a system that uses network-flow level community behavior analysis to achieve high detection rates with few false positives and high robustness against evasion attacks.

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 Enhanced PeerHunter can obtain high detection rate with few false positives, and high robustness against the proposed attacks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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