Přehled o publikaci
2019
Behavior-Aware Network Segmentation using IP Flows
SMERIGA, Juraj and Tomáš JIRSÍKBasic information
Original name
Behavior-Aware Network Segmentation using IP Flows
Authors
SMERIGA, Juraj and Tomáš JIRSÍK
Edition
ACM. New York, NY, USA, Proceedings of the 14th International Conference on Availability, Reliability and Security, p. 1-9, 9 pp. 2019
Publisher
ACM
Other information
Language
English
Type of outcome
Proceedings paper
Country of publisher
United States of America
Confidentiality degree
is not subject to a state or trade secret
Publication form
electronic version available online
References:
Marked to be transferred to RIV
Yes
RIV identification code
RIV/00216224:14610/19:00110502
Organization
Ústav výpočetní techniky – Repository – Repository
ISBN
978-1-4503-7164-3
EID Scopus
Keywords (in Czech)
IP flows; strojové učení; segmentace sítě; shluková analýza; behaviorální analýza
Keywords in English
IP flows; machine learning; network segmentation; clustering; classification; behavior analysis
Links
EF16_019/0000822, research and development project.
Changed: 9/9/2020 03:20, RNDr. Daniel Jakubík
Abstract
In the original language
Network segmentation is a powerful tool for network defense. In contemporary complex, dynamic, and multilayer networks, network segmentation suffers from lack of visibility into processes in the network, which results in less strict segment definition and loosen network security. Moreover, the dynamics of the networks makes the manual identification of network segments nearly impossible. In this paper, we inspect the possibilities of the behavior-aware network segmentation using IP flows and machine learning approaches that would enable to identify segments automatically, even in a complex network. We evaluate the suitability of clustering algorithms for identification of behavior-consistent segments in a network. We show that the clustering algorithms can identify relevant behavior-consistent clusters that overlap with those identified manually by experts. Apart from the segment identification, we investigate the other essential task of network segmentation process: assignment of an unknown host to an existing segment. We evaluate the performance of four different classification mechanisms on a real-world dataset. We show that it is possible to assign an unknown host to an appropriate network segment with up to 92% precision. Moreover, we release the whole dataset and experiment steps available for public use.