DocumentCode
1754903
Title
Behavior Analysis of Internet Traffic via Bipartite Graphs and One-Mode Projections
Author
Kuai Xu ; Feng Wang ; Lin Gu
Author_Institution
Sch. of Math. & Natural Sci., Arizona State Univ., Glendale, AZ, USA
Volume
22
Issue
3
fYear
2014
fDate
41791
Firstpage
931
Lastpage
942
Abstract
As Internet traffic continues to grow in size and complexity, it has become an increasingly challenging task to understand behavior patterns of end-hosts and network applications. This paper presents a novel approach based on behavioral graph analysis to study the behavior similarity of Internet end-hosts. Specifically, we use bipartite graphs to model host communications from network traffic and build one-mode projections of bipartite graphs for discovering social-behavior similarity of end-hosts. By applying simple and efficient clustering algorithms on the similarity matrices and clustering coefficient of one-mode projection graphs, we perform network-aware clustering of end-hosts in the same network prefixes into different end-host behavior clusters and discover inherent clustered groups of Internet applications. Our experiment results based on real datasets show that end-host and application behavior clusters exhibit distinct traffic characteristics that provide improved interpretations on Internet traffic. Finally, we demonstrate the practical benefits of exploring behavior similarity in profiling network behaviors, discovering emerging network applications, and detecting anomalous traffic patterns.
Keywords
Internet; graph theory; matrix algebra; pattern clustering; telecommunication traffic; Internet traffic; behavioral graph analysis; bipartite graph; clustering algorithms; network-aware clustering; one-mode projection; one-mode projection graph; similarity matrices; social-behavior similarity; traffic profiling; Behavior graph analysis; bipartite graph; clustering algorithms; one-mode projection; traffic profiling;
fLanguage
English
Journal_Title
Networking, IEEE/ACM Transactions on
Publisher
ieee
ISSN
1063-6692
Type
jour
DOI
10.1109/TNET.2013.2264634
Filename
6523973
Link To Document