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Fog Intelligence for Network Anomaly Detection

机译:网络异常检测的雾智能

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摘要

Anomalies are common in network system monitoring. When manifested as network threats to be mitigated, service outages to be prevented, and security risks to be ameliorated, detecting such anomalous network behaviors becomes of great importance. However, the growing scale and complexity of the mobile communication networks, as well as the ever-increasing amount and dimensionality of network surveillance data, make it extremely difficult to monitor a mobile network and discover abnormal network behaviors. Recent advances in machine learning allow obtaining near-optimal solutions to complicated decision making problems with many sources of uncertainty that cannot be accurately characterized by traditional mathematical models. However, most machine learning algorithms are centralized, which renders them inapplicable to large-scale distributed wireless networks with tens of millions of mobile devices. In this article, we present fog intelligence, a distributed machine learning architecture that enables intelligent wireless network management. It preserves the advantage of both edge processing and centralized cloud computing. Furthermore, the proposed architecture is scalable, privacy-preserving, and well suited for intelligent management of a distributed wireless network.
机译:异常在网络系统监控中很常见。当表现为要减轻网络威胁时,要防止的服务中断,以及要改善的安全风险,检测这种异常网络行为变得非常重要。然而,移动通信网络的规模和复杂性,以及网络监控数据的不断增加的量和维度,使得监控移动网络非常困难并发现网络行为异常。机器学习的最新进展允许获得近最佳解决方案,以解决许多不确定来源的问题,这些不确定源不能被传统的数学模型准确地表征。然而,大多数机器学习算法是集中的,这使得它们可以不适用于大规模分布式无线网络,其具有数百万个移动设备。在本文中,我们展示了雾智能,这是一个分布式机器学习架构,可实现智能无线网络管理。它保留了边缘处理和集中云计算的优势。此外,所提出的架构是可扩展的,隐私保留,并且适用于分布式无线网络的智能管理。

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