利用滑动窗口和多任务学习机制提高神经网络流量预测能力

J. Rodrigues, A. Nogueira, P. Salvador
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引用次数: 12

摘要

由于网络服务的多样性及其行为的不可预测性,对能够帮助IP网络全球管理的工具的需求日益增加。能够预测网络数据对于预测网络升级决策或网络功能操作的更改非常有用。本文提出了一种基于神经网络的实用方法,能够预测特定网络链路上的网络流量。为了提高不同神经网络模型的预测能力,引入并测试了滑动窗口和多任务学习机制。通过将此预测框架应用于不同的网络链路,可以预测全球网络流量的演变,并将此信息用于网络安全、管理和规划目的。将该模型应用于实际网络场景的结果表明,该概念在预测所选链路上的网络流量方面具有优异的性能。即使在用户数量及其各自的配置文件发生重大变化时,预测也是准确的。此外,所提出的预测方法具有通用性,可以用于预测不同的网络数据,即使是简单和小的NN模型也能获得非常满意的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Traffic Prediction Capability of Neural Networks Using Sliding Window and Multi-task Learning Mechanisms
Due to the diversity of network services and the unpredictability of their behaviors, there is an increasing need for tools that can aid in the global management of IP networks. Being able to predict network data can be very useful to anticipate network upgrading decisions or changes on the network functional operation. This paper proposes a practical approach, based on neural networks, that is able to predict network traffic in a specific network link. In order to improve the prediction capabilities of the different neural network models, sliding window and multi-task learning mechanisms are introduced and tested. By applying this prediction framework to different network links, it will be possible to predict the evolution of the global network traffic and use this information for network security, management and planning purposes. The results obtained by applying the proposed model to realistic network scenarios show that this concept can achieve excellent performance in the prediction of the network traffic on the selected links. The prediction is accurate even when there are significant changes in the number of users and their respective profiles. Moreover, the proposed prediction approach is generic and can be used to predict different network data with a very satisfactory accuracy, even with simple and small NN models.
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