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Big Data Enabled Anomaly User Detection in Mobile Wireless Networks

机译:移动无线网络中启用大数据的异常用户检测

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With the rapid development of the mobile Internet and the Internet of Things (IoT), mobile data traffic has been exploded. Wireless communication networks have entered the era of big data. Anomalous user can be studied with their negative experience by analyzing users’ activities in wireless networks. In this paper, we propose a novel mobile big data (MBD) architecture consisting of four layers, including storage layer, fusion layer, analysis layer and the application layer. Based on the MDB architecture, we present a data-driven user experience prediction as a case study of applying the proposed MBD architecture in wireless network. By leveraging machine learning algorithms, the proposed user experience prediction can pre-evaluate user experience through network performance and user behavior features in a data-driven fashion. First, we perform a preliminary analysis on consumer complaints records obtained from the network monitoring system of a major mobile network operator (MNO) in China. Second, up-sampling and down-sampling are combined to combat the severe imbalanced negative and positive samples. The results show that proposed automated machine learning algorithm improves the prediction accuracy compared with two commonly baselines adopted by the MNO: empirical criterion and rule-based expert system.
机译:随着移动互联网和物联网(IoT)的飞速发展,移动数据流量已经爆炸式增长。无线通信网络已进入大数据时代。通过分析用户在无线网络中的活动,可以用他们的负面经验来研究异常用户。在本文中,我们提出了一种新颖的移动大数据(MBD)体系结构,该体系结构由四层组成,包括存储层,融合层,分析层和应用程序层。基于MDB架构,我们提出了一种数据驱动的用户体验预测,作为在无线网络中应用拟议的MBD架构的案例研究。通过利用机器学习算法,建议的用户体验预测可以以数据驱动的方式通过网络性能和用户行为特征来预先评估用户体验。首先,我们对从中国主要移动网络运营商(MNO)的网络监控系统获得的消费者投诉记录进行初步分析。其次,将上采样和下采样相结合以应对严重的失衡的负样本和正样本。结果表明,与MNO所采用的两个常用基准相比,提出的自动化机器学习算法提高了预测精度:经验准则和基于规则的专家系统。

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