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Mining Graph-Fourier Transform Time Series for Anomaly Detection of Internet Traffic at Core and Metro Networks

机译:用于异常检测核心和地铁网络的挖掘图形 - 傅立叶变换时间序列

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摘要

This article proposes a framework to analyse traffic-data processes on a long-haul backbone infrastructure network providing internet services at a national level. This type of network requires low latency and fast speed, which means there is a large demand for research focusing on near real-time decision-making and resilience assessment. To this aim, this article proposes two innovative, complementary procedures: a multi-view approach for the topology analysis of a backbone network at a static level and a time-series mining approach of the graph signal for modelling the traffic dynamics. The combined framework provides a deeper understanding of a backbone network than classical models, allowing for backbone network optimisation operations and management at near real-time. This methodology was applied to the backbone infrastructure of a major UK internet service provider. Doing so increased accuracy and computational efficiency for detecting where and when anomalies and pattern irregularities occur in the network signal.
机译:本文提出了一个框架,分析了在国家一级提供互联网服务的长途骨干基础设施网络上的流量数据流程。这种类型的网络需要低延迟和快速速度,这意味着对研究近乎实时决策和恢复性评估具有大量需求。为此目的,本文提出了两种创新,互补的程序:在静态级别的骨干网拓扑分析的多视图方法和图形信号的时间级挖掘方法,用于建模交通动态。组合框架提供了比经典模型更深入了解骨干网,允许在近实时进行骨干网络优化操作和管理。该方法应用于英国主要互联网服务提供商的骨干基础设施。这样做提高了准确性和计算效率,用于检测网络信号中发生异常和模式不规则的位置和模式。

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