An Effective Method of Monitoring the Large-Scale Traffic Pattern Based on RMT and PCA

Mechanisms to extract the characteristics of network traffic play a significant role in traffic monitoring, offering helpful information for network management and control. In this paper, a method based on Random Matrix Theory (RMT) and Principal Components Analysis (PCA) is proposed for monitoring...

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Main Authors: Jia Liu, Peng Gao, Jian Yuan, Xuetao Du
Format: Article
Language:English
Published: Hindawi Limited 2010-01-01
Series:Journal of Probability and Statistics
Online Access:http://dx.doi.org/10.1155/2010/375942
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spelling doaj-acc5da029ec443dfadfc80f326d587602020-11-24T22:27:26ZengHindawi LimitedJournal of Probability and Statistics1687-952X1687-95382010-01-01201010.1155/2010/375942375942An Effective Method of Monitoring the Large-Scale Traffic Pattern Based on RMT and PCAJia Liu0Peng Gao1Jian Yuan2Xuetao Du3Research Division, China Mobile Group Design Institute Co. Ltd, Beijing 100080, ChinaResearch Division, China Mobile Group Design Institute Co. Ltd, Beijing 100080, ChinaDepartment of Electronic Engineering, Tsinghua University, Beijing 10084, ChinaResearch Division, China Mobile Group Design Institute Co. Ltd, Beijing 100080, ChinaMechanisms to extract the characteristics of network traffic play a significant role in traffic monitoring, offering helpful information for network management and control. In this paper, a method based on Random Matrix Theory (RMT) and Principal Components Analysis (PCA) is proposed for monitoring and analyzing large-scale traffic patterns in the Internet. Besides the analysis of the largest eigenvalue in RMT, useful information is also extracted from small eigenvalues by a method based on PCA. And then an appropriate approach is put forward to select some observation points on the base of the eigen analysis. Finally, some experiments about peer-to-peer traffic pattern recognition and backbone aggregate flow estimation are constructed. The simulation results show that using about 10% of nodes as observation points, our method can monitor and extract key information about Internet traffic patterns.http://dx.doi.org/10.1155/2010/375942
collection DOAJ
language English
format Article
sources DOAJ
author Jia Liu
Peng Gao
Jian Yuan
Xuetao Du
spellingShingle Jia Liu
Peng Gao
Jian Yuan
Xuetao Du
An Effective Method of Monitoring the Large-Scale Traffic Pattern Based on RMT and PCA
Journal of Probability and Statistics
author_facet Jia Liu
Peng Gao
Jian Yuan
Xuetao Du
author_sort Jia Liu
title An Effective Method of Monitoring the Large-Scale Traffic Pattern Based on RMT and PCA
title_short An Effective Method of Monitoring the Large-Scale Traffic Pattern Based on RMT and PCA
title_full An Effective Method of Monitoring the Large-Scale Traffic Pattern Based on RMT and PCA
title_fullStr An Effective Method of Monitoring the Large-Scale Traffic Pattern Based on RMT and PCA
title_full_unstemmed An Effective Method of Monitoring the Large-Scale Traffic Pattern Based on RMT and PCA
title_sort effective method of monitoring the large-scale traffic pattern based on rmt and pca
publisher Hindawi Limited
series Journal of Probability and Statistics
issn 1687-952X
1687-9538
publishDate 2010-01-01
description Mechanisms to extract the characteristics of network traffic play a significant role in traffic monitoring, offering helpful information for network management and control. In this paper, a method based on Random Matrix Theory (RMT) and Principal Components Analysis (PCA) is proposed for monitoring and analyzing large-scale traffic patterns in the Internet. Besides the analysis of the largest eigenvalue in RMT, useful information is also extracted from small eigenvalues by a method based on PCA. And then an appropriate approach is put forward to select some observation points on the base of the eigen analysis. Finally, some experiments about peer-to-peer traffic pattern recognition and backbone aggregate flow estimation are constructed. The simulation results show that using about 10% of nodes as observation points, our method can monitor and extract key information about Internet traffic patterns.
url http://dx.doi.org/10.1155/2010/375942
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