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<b>URL:</b>
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<a href="http://arxiv.org/abs/1005.5674v3">http://arxiv.org/abs/1005.5674v3</a>
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<b>Entry Date:</b>
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2010-10-22


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<b>Abstract:</b>
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The geographical location of Internet IP addresses has an importance both for academic research and commercial
applications. Thus, both commercial and academic databases and tools are available for mapping IP addresses to geographic
locations. Evaluating the accuracy of these mapping services is complex since obtaining diverse large scale ground truth is
very hard. In this work we evaluate mapping services using an algorithm that groups IP addresses to PoPs, based on structure
and delay. This way we are able to group close to 100,000 IP addresses world wide into groups that are known to share a
geo-location with high confidence. We provide insight into the strength and weaknesses of IP geolocation databases, and discuss
their accuracy and encountered anomalies.



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