Options
Analysis of Packet Transmission Processes in Peer-to-Peer Networks by Statistical Inference Methods
Markovich, Natalia M.; Krieger, Udo R. (2026): Analysis of Packet Transmission Processes in Peer-to-Peer Networks by Statistical Inference Methods, in: Bamberg: Otto-Friedrich-Universität, S. 104–119.
Faculty/Chair:
Author:
Publisher Information:
Year of publication:
2026
Pages:
Source/Other editions:
Ernst Biersack, Christian Callegari, und Maja Matijasevic (Hrsg.), Data traffic monitoring and analysis : from measurement, classfication, and anomaly detection to qualtiy of experience, Berlin ; Heidelberg: Springer, 2013, S. 104–119, ISBN: 978-3-642-36783-0, 978-3-642-36784-7
Year of first publication:
2013
Language:
English
Licence:
Abstract:
Applying advanced statistical techniques, we characterize the peculiarities of a locally observed peer population in a popular P2P overlay network. The latter is derived from a mesh-pull architecture. Using flow data collected at a single peer, we show how Pareto and Generalized Pareto models can be applied to classify the local behavior of the population feeding a peer. Our approach is illustrated both by file sharing data of a P2P session generated by a mobile BitTorrent client in a WiMAX testbed and by video data streamed to a stationary client in a SopCast session. These techniques can help us to cope with an efficient adaptation of P2P dissemination protocols to mobile environments.
Keywords: ; ; ;
heavy hitter model
Generalized Pareto distribution
peer-to-peer network
change-point detection
Type:
Contribution to an Articlecollection
Activation date:
April 22, 2026
Permalink
https://fis.uni-bamberg.de/handle/uniba/114801