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Multilayer Perceptron and Stacked Autoencoder for Internet Traffic Prediction

机译:多层感知器和堆叠式自动编码器用于Internet流量预测

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Internet traffic prediction is an important task for many applications, such as adaptive applications, congestion control, admission control, anomaly detection and bandwidth allocation. In addition, efficient methods of resource management can be used to gain performance and reduce costs. The popularity of the newest deep learning methods has been increasing in several areas, but there is a lack of studies concerning time series prediction. This paper compares two different artificial neural network approaches for the Internet traffic forecast. One is a Multilayer Perceptron (MLP) and the other is a deep learning Stacked Autoencoder (SAE). It is shown herein how a simpler neural network model, such as the MLP, can work even better than a more complex model, such as the SAE, for Internet traffic prediction.
机译:互联网流量预测是许多应用程序的重要任务,例如自适应应用程序,拥塞控制,准入控制,异常检测和带宽分配。此外,可以使用有效的资源管理方法来获得性能并降低成本。最新的深度学习方法在几个领域的流行度已经增加,但是缺乏有关时间序列预测的研究。本文比较了两种用于互联网流量预测的人工神经网络方法。一种是多层感知器(MLP),另一种是深度学习堆栈式自动编码器(SAE)。在此示出了用于互联网流量预测的更简单的神经网络模型(例如MLP)如何比更复杂的模型(例如SAE)更好地工作。

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