2006 IEEE International Conference on Communications 2006
DOI: 10.1109/icc.2006.254860
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SVM-Based Models for Predicting WLAN Traffic

Abstract: A novel type of learning machine called support vector machine (SVM) has been receiving increasing interests in the areas ranging from its original application in pattern recognition to other applications such as regression estimation due to its remarkable generalization performance. In this paper, we employ the SVM to forecast traffic in WLANs. We study the issues of one-step-ahead prediction and multi-step-ahead prediction without any assumption on the statistical property of actual WLAN traffic. We also eva… Show more

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Cited by 49 publications
(29 citation statements)
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References 34 publications
(49 reference statements)
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“…Generally, network traffic has a mix of self-similarity, Short Range and Long Range Dependencies (SRD and LRD) (e.g., (Kleinrock, 1993); (Paxon & Floyd, 1995); (Leland et al, 1994); (Jiang et al, 2001)). There exist concentrated periods of low activity and high activity (i.e., burstiness) in the network traffic (Feng, 2006). An accurate predictor needs to capture the traffic characteristics such as SRD and LRD, selfsimilarity and nonstationarity (Sadek & Khotanzad, 2004a).…”
Section: Traffic Prediction Techniquesmentioning
confidence: 99%
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“…Generally, network traffic has a mix of self-similarity, Short Range and Long Range Dependencies (SRD and LRD) (e.g., (Kleinrock, 1993); (Paxon & Floyd, 1995); (Leland et al, 1994); (Jiang et al, 2001)). There exist concentrated periods of low activity and high activity (i.e., burstiness) in the network traffic (Feng, 2006). An accurate predictor needs to capture the traffic characteristics such as SRD and LRD, selfsimilarity and nonstationarity (Sadek & Khotanzad, 2004a).…”
Section: Traffic Prediction Techniquesmentioning
confidence: 99%
“…(Shu et al, 1999) also proposes using fractional ARIMA (FARIMA) to capture the self-similarity of network traffic. However, FARIMA model is time-consuming (Feng, 2006). (Sadek & Khotanzad, 2004a) discusses a two-stage predictor.…”
Section: Arima Based Traffic Forecastingmentioning
confidence: 99%
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“…A function K (x, x") is called a kernel if it corresponds to a dot product in some feature space and if it satisfy Mercer"s condition [6].…”
Section: Kernel Trick:-mentioning
confidence: 99%
“…The complexity of the network services had led to network congestion [1,2,3,6]. In the complex network services, it has become a very difficult task to allocate bandwidth to all users so that it is judiciously utilized by all [9,15,18].…”
Section: Introductionmentioning
confidence: 99%