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Evaluation of network traffic prediction based on neural networks with multi-task learning and multiresolution decomposition

机译:基于多任务学习和多分辨率分解的神经网络的网络流量预测评估

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Network traffic exhibits strong correlations which make it suitable for prediction. Real-time forecasting of network traffic load accurately and in a computationally efficient manner is the key element of proactive network management and congestion control. This paper compares predictions produced by different types of neural networks (NN) with forecasts from statistical time series models (ARMA, ARAR, HW). The novelty of our approach is to predict aggregated Ethernet traffic with NNs employing multiresolution learning (MRL) which is based on wavelet decomposition. In addition, we introduce a new NN training paradigm, namely the combination of multi-task learning with MRL. The experimental results show that nonlinear prediction based on NNs is better suited for traffic prediction purposes than linear forecasting models. Moreover, MRL helps to exploit the correlation structures at lower resolutions of the traffic trace and improves the generalization capability of NNs.
机译:网络流量表现出强烈的相关性,使其适合于预测。准确且以计算有效的方式实时预测网络流量负荷是主动网络管理和拥塞控制的关键元素。本文将不同类型的神经网络(NN)产生的预测比较了来自统计时间序列模型(ARMA,Arar,HW)的预测。我们的方法的新颖性是预测使用基于小波分解的多分辨率学习(MRL)的NNS的聚合以太网流量。此外,我们介绍了一个新的NN培训范式,即使用MRL的多任务学习的组合。实验结果表明,基于NNS的非线性预测更适合于交通预测目的而不是线性预测模型。此外,MRL有助于利用交通轨迹的较低分辨率来利用相关结构,并提高NNS的泛化能力。

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