Title
Modeling IP-to-IP Communication using the Weighted Stochastic Block Model.
Abstract
The vision of self-driving networks integrates network measurements with network control. Processing data for each of the network control tasks separately might be prohibitive due to the large volume and waste of computational resources. In this work we make the case of using the Weighted Stochastic Block Model (WSBM), a probabilistic model, to learn a task independent representation. In particular, we consider a case study of real-world IP-to-IP communication. The learned representation provides higher level-features for traffic engineering, anomaly detection, or other tasks, and reduces their computational effort. We find that the WSBM is able to accurately model traffic and structure of communication in the considered trace.
Year
Venue
Field
2018
SIGCOMM Posters and Demos
Anomaly detection,Computer science,Stochastic block model,Statistical model,Network monitoring,Network control,Traffic engineering,Distributed computing
DocType
ISBN
Citations 
Conference
978-1-4503-5915-3
0
PageRank 
References 
Authors
0.34
6
6
Name
Order
Citations
PageRank
Patrick Kalmbach1286.12
Lion Gleiter200.34
Johannes Zerwas3225.18
Andreas Blenk421523.28
Wolfgang Kellerer51474157.92
Stefan Schmid655971.98