LBNN: Perceiving the State Changes of a Core Telecommunications Network via Linear Bayesian Neural Network

Yanying Lin, Kejiang Ye, Ming Chen, Naitian Deng, Tailin Wu, Chengzhong Xu
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Abstract

The core network is the most basic facility in the entire telecommunications network, which is consists of large number of routers, switches and firewalls. Network management like re-planning routes or adjusting policies is very important to avoid failures. However, the timing of intervention is very challenging. Too early intervention will incur unnecessary overheads, and too late intervention will cause serious disaster. In this paper, we analyzed a large data set from a real-world core telecommunications network and proposed Linear Bayesian Neural Networks (LBNN)11Code available at https://github.com/YanyingLin/Lbnn to perceive the core network state changes and make decisions about network intervention. In particular, we considered three aspects of complexity, including the weight of the mutual effect between devices, the dependence on the time dimension of the network states, and the randomness of the network state changes. The entire model is extended to a probability model based on the Bayesian framework to better capture the randomness and variability of the data. Experimental results on real-world data set show that LBNN achieves very high detection accuracy, with an average of 92.1%.
基于线性贝叶斯神经网络的核心电信网状态变化感知
核心网是整个电信网中最基础的设施,由大量的路由器、交换机和防火墙组成。重新规划路由或调整策略等网络管理对于避免故障非常重要。然而,干预的时机非常具有挑战性。过早干预会造成不必要的开销,而过晚干预则会造成严重的灾难。在本文中,我们分析了来自现实世界核心电信网络的大型数据集,并提出了线性贝叶斯神经网络(LBNN)11Code,该网络可在https://github.com/YanyingLin/Lbnn上获得,以感知核心网络状态变化并做出网络干预决策。特别是,我们考虑了三个方面的复杂性,包括设备之间相互影响的权重,网络状态对时间维度的依赖,以及网络状态变化的随机性。将整个模型扩展为基于贝叶斯框架的概率模型,以更好地捕捉数据的随机性和可变性。在真实数据集上的实验结果表明,LBNN的检测准确率非常高,平均达到92.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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