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A BRPCA Based Approach for Anomaly Detection in Mobile Networks

机译:基于BRPCA的移动网络异常检测方法

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Researchers have recently uncovered numerous exploitable vulnerabilities that enable malicious individuals to mount attacks against mobile network users and services. The detection and attribution of these threats are of major importance to the mobile operators. Therefore, this paper presents a novel approach for anomaly detection in 3G/4G mobile networks based on Bayesian Robust Principal Component Analysis (BRPCA), which enables cognition in mobile networks through the ability to perceive threats and to act in order to mitigate their effects. BRPCA is used to model aggregate network data and subsequently identify abnormal network states. A major difference with previous work is that this method takes into account the spatio-temporal nature of the mobile network traffic, to reveal encoded periodic characteristics, which has the potential to reduce false positive rate. Furthermore, the BRPCA method is unsupervised and does not raise privacy issues due to the nature of the raw data. The effectiveness of the approach was evaluated against three other methods on two synthetic datasets for a large mobile network, and the results show that BRPCA provides both higher detection rate and lower computational overhead.
机译:研究人员最近发现了许多可利用的漏洞,这些漏洞使恶意人员能够对移动网络用户和服务发起攻击。这些威胁的检测和归因对移动运营商至关重要。因此,本文提出了一种基于贝叶斯鲁棒主成分分析(BRPCA)的3G / 4G移动网络异常检测的新方法,该方法可通过感知威胁和采取行动以减轻威胁影响的能力来识别移动网络。 BRPCA用于对聚合网络数据建模并随后识别异常网络状态。与以前的工作的主要区别在于,该方法考虑了移动网络流量的时空特性,以揭示编码的周期性特征,从而有可能降低误报率。此外,由于原始数据的性质,BRPCA方法不受监督并且不会引起隐私问题。在大型移动网络的两个合成数据集上,针对三种其他方法评估了该方法的有效性,结果表明BRPCA既提供了更高的检测率,又提供了更低的计算开销。

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