Title
APIVADS: A Novel Privacy-Preserving Pivot Attack Detection Scheme Based on Statistical Pattern Recognition
Abstract
Advanced cyber attackers often “pivot” through several devices in such complex infrastructure to obfuscate their footprints and overcome connectivity restrictions. However, prior pivot attack detection strategies present concerning limitations. This paper addresses an improvement of cyber defence with APIVADS, a novel adaptive pivoting detection scheme based on traffic flows to determine cyber adversaries’ presence based on their pivoting behaviour in simple and complex interconnected networks. Additionally, APIVADS is agnostic regarding transport and application protocols. The scheme is optimized and tested to cover remotely connected locations beyond a corporate campus’s perimeters. The scheme considers a hybrid approach between decentralized host-based detection of pivot attacks and a centralized approach to aggregate the results to achieve scalability. Empirical results from our experiments show the proposed scheme is efficient and feasible. For example, a 98.54% detection accuracy near real-time is achievable by APIVADS differentiating ongoing pivot attacks from regular enterprise traffic as TLS, HTTPS, DNS and P2P over the internet.
Year
DOI
Venue
2022
10.1109/TIFS.2022.3146076
IEEE Transactions on Information Forensics and Security
Keywords
DocType
Volume
APT,pivot attack,privacy-preserving,lateral movement,network flow
Journal
17
ISSN
Citations 
PageRank 
1556-6013
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Rafael Salema Marques100.34
Haider M. Al-Khateeb295.90
Gregory Epiphaniou35410.12
Carsten Maple460385.70