A Short-Term Forecasting Algorithm for Network Traffic Based on Chaos Theory and SVM

Recently, the forecasting technologies for network traffic have played a significant role in network management, congestion control and network security. Forecasting algorithms have also been investigated for decades along with the development of Time Series Analysis (TSA). Chaotic Time Series Analy...

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Veröffentlicht in:Journal of network and systems management 2011-12, Vol.19 (4), p.427-447
Hauptverfasser: Liu, Xingwei, Fang, Xuming, Qin, Zhenhua, Ye, Chun, Xie, Miao
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container_issue 4
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container_title Journal of network and systems management
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creator Liu, Xingwei
Fang, Xuming
Qin, Zhenhua
Ye, Chun
Xie, Miao
description Recently, the forecasting technologies for network traffic have played a significant role in network management, congestion control and network security. Forecasting algorithms have also been investigated for decades along with the development of Time Series Analysis (TSA). Chaotic Time Series Analysis (CTSA) may be used to model and forecast the time series by Chaos Theory. As one of the prevailing intelligent forecasting algorithms, it is worthwhile to integrate CTSA and Support Vector Machine (SVM). In this paper, after the vulnerabilities of Local Support Vector Machine (LSVM) in forecasting modeling are analyzed, the Dynamic Time Wrapping (DTW) and the “Dynamic K” strategy are introduced, as well as a short-term network traffic forecasting algorithm LSVM-DTW-K based on Chaos Theory and SVM is presented. Finally, two sets of network traffic datasets collected from wired and wireless campus networks, respectively, are studied for our experiments.
doi_str_mv 10.1007/s10922-010-9188-3
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subjects Algorithms
Chaos theory
Communications Engineering
Computer Communication Networks
Computer Science
Computer Systems Organization and Communication Networks
Datasets
Forecasting
Forecasting techniques
Information Systems and Communication Service
Networks
Neural networks
Operations Research/Decision Theory
Studies
Support vector machines
Systems management
Time series
Wavelet transforms
title A Short-Term Forecasting Algorithm for Network Traffic Based on Chaos Theory and SVM
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