自动识别大型互联网事件的来源

K. Glass, R. Colbaugh, M. Planck
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引用次数: 11

摘要

互联网偶尔会经历由自然和人为干扰引起的大中断,开发方法在网络中定位给定中断的来源(即,其扰动引发事件的网络元素)是非常有意义的。本文提出了一种接近实时的方法来实现这一逻辑定位目标。提出的方法包括三个步骤:1.)数据采集/预处理,其中获取公开的互联网活动测量数据,“清洗”并组装成适合计算分析的格式;2.)通过基于张量分解的时间序列分析来表征事件;3.)通过图论分析来定位中断源。这个程序提供了一个原则性的、自动化的方法来识别“整个互联网”规模的网络中断的根本原因。通过计算机模拟研究和最近大规模互联网中断的实证分析,说明了所提出的分析方法的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatically identifying the sources of large Internet events
The Internet occasionally experiences large disruptions, arising from both natural and manmade disturbances, and it is of significant interest to develop methods for locating within the network the source of a given disruption (i.e., the network element(s) whose perturbation initiated the event). This paper presents a near real-time approach to realizing this logical localization objective. The proposed methodology consists of three steps: 1.) data acquisition/preprocessing, in which publicly available measurements of Internet activity are acquired, “cleaned”, and assembled into a format suitable for computational analysis, 2.) event characterization via tensor factorization-based time series analysis, and 3.) localization of the source of the disruption through graph theoretic analysis. This procedure provides a principled, automated approach to identifying the root causes of network disruptions at “whole-Internet” scale. The considerable potential of the proposed analytic method is illustrated through a computer simulation study and empirical analysis of a recent, large-scale Internet disruption.
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