Small-time scale network traffic prediction based on a local support vector machine regression model

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2009 Chin. Phys. Soc. and IOP Publishing Ltd
, , Citation Meng Qing-Fang et al 2009 Chinese Phys. B 18 2194 DOI 10.1088/1674-1056/18/6/014

1674-1056/18/6/2194

Abstract

In this paper we apply the nonlinear time series analysis method to small-time scale traffic measurement data. The prediction-based method is used to determine the embedding dimension of the traffic data. Based on the reconstructed phase space, the local support vector machine prediction method is used to predict the traffic measurement data, and the BIC-based neighbouring point selection method is used to choose the number of the nearest neighbouring points for the local support vector machine regression model. The experimental results show that the local support vector machine prediction method whose neighbouring points are optimized can effectively predict the small-time scale traffic measurement data and can reproduce the statistical features of real traffic measurements.

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10.1088/1674-1056/18/6/014