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The Effect of Using Attribute Information in Network Traffic Prediction with Deep Learning

机译:属性信息在深度学习网络流量预测中的作用

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It is crucial for network operators to predict network traffic in the future as accurate as possible for appropriate resource provisioning and traffic engineering. Recurrent neural network (RNN) methods are considered to be the most promising prediction methods because of their high prediction accuracy. In conventional studies, RNN methods use only time series of traffic volume as input, and do not use any attribute information (e.g., timestamp and day of the week) of the time series data. However, traffic volume changes depending on both time and day of the week. Therefore, it is possible that we can further improve the prediction accuracy of the RNN methods by using the attribute information as input, in addition to the time series of traffic volume. In this paper, we investigate the effect of using the attribute information of time series of traffic volume on prediction accuracy in network traffic prediction. We propose two RNN methods: RNN-VT method and RNN-VTD method. The RNN-VT method uses timestamp information and the RNN-VTD method uses both timestamp and day of the week information as input, in addition to the time series of traffic volume. Experimental results show that day of the week information is significantly effective for improving prediction accuracy of the RNN methods while timestamp information is not effective.
机译:对于网络运营商来说,对于适当的资源供应和流量工程设计,尽可能准确地预测网络流量至关重要。递归神经网络(RNN)方法由于具有较高的预测精度而被认为是最有前途的预测方法。在常规研究中,RNN方法仅使用业务量的时间序列作为输入,而不使用时间序列数据的任何属性信息(例如,时间戳和星期几)。但是,流量会根据时间和星期几而变化。因此,除了业务量的时间序列以外,我们还可以通过使用属性信息作为输入来进一步提高RNN方法的预测准确性。在本文中,我们研究了在网络流量预测中使用流量量的时间序列属性信息对预测准确性的影响。我们提出两种RNN方法:RNN-VT方法和RNN-VTD方法。除了流量量的时间序列外,RNN-VT方法使用时间戳信息,而RNN-VTD方法使用时间戳和星期几信息作为输入。实验结果表明,星期几信息对于提高RNN方法的预测准确性非常有效,而时间戳信息则无效。

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