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Minimax Probability Machine Regression for wireless traffic short term forecasting

机译:用于无线流量短期预测的Minimax概率机器回归

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Traffic can reflect the latent rules and characteristics of the wireless network. Through researching, we found that the more accurate traffic prediction, the higher efficiency, utilization rate of network bandwidth and QoS can be guaranteed. Therefore, how to construct predictive models of wireless network traffic exactly is a major research topic. In this paper, Minimax Probability Machine Regression (MPMR) is proposed for forecasting wireless network traffic in 802.11 networks. Experiment provides the performance of the forecasting model and gives some comparative analysis. It evidences that the model is feasible. And compared with SVM, MPMR can not only obtain an efficient and satisfactory prediction efficiency but also less errors than SVM.
机译:流量可以反映无线网络的潜在规则和特征。通过研究发现,流量预测越准确,效率,网络带宽利用率和QoS越高。因此,如何准确地构建无线网络流量的预测模型是一个主要的研究课题。在本文中,提出了Minimax概率机回归(MPMR)来预测802.11网络中的无线网络流量。实验提供了预测模型的性能,并提供了一些比较分析。它证明了该模型是可行的。并且与SVM相比,MPMR不仅可以获得高效且令人满意的预测效率,而且与SVM相比误差也更少。

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