“Is my Internet down?”: Sifting through User-Affecting Outages with Google Trends
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Date
2022-10
Publication Type
Conference Paper
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yes
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Abstract
What are the worst outages for Internet users? How long do they last, and how wide are they? Such questions are hard to answer via traditional outage detection and analysis techniques, as they conventionally rely on network-level signals and do not necessarily represent users’ perceptions of connectivity. We present SIFT, a detection and analysis tool for capturing user-affecting Internet outages. SIFT leverages users’ aggregated web search activity to detect outages. Specifically, SIFT starts by building a timeline of users’ interests in outage-related search queries. It then analyzes this timeline looking for spikes of user interest. Finally, SIFT characterizes these spikes in duration, geographical extent, and simultaneously trending search terms which may help understand root causes, such as power outages or associated ISPs. We use SIFT to collect more than 49 000 Internet outages in the United States over the last two years. Among others, SIFT reveals that user-affecting outages: (i) do not happen uniformly: half of them originate from 10 states only; (ii) can affect users for a long time: 10% of them last at least 3 hours; and (iii) can have a broad impact: 11% of them simultaneously affect at least 10 distinct states. SIFT annotations also reveal a perhaps overlooked fact: outages are often caused by climate and/or power-related issues.
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published
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Book title
IMC '22: Proceedings of the 22nd ACM Internet Measurement Conference
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Volume
Pages / Article No.
290 - 297
Publisher
Association for Computing Machinery
Event
22nd ACM Internet Measurement Conference (IMC 2022)
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Software
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Subject
Internet outages; Anomaly detection; Data mining; Google Trends
Organisational unit
09477 - Vanbever, Laurent / Vanbever, Laurent