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Enhancing the classification accuracy of IP geolocation

机译:提高IP地理位置的分类准确性

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The ability to localize Internet hosts is appealing for a range of applications from online advertising to localizing cyber attacks. Recently, measurement-based approaches have been proposed to accurately identify the location of Internet hosts. These approaches typically produce erroneous results due to measurement errors. In this paper, we propose an Enhanced Learning Classifier approach for estimating the geolocation of Internet hosts with increased accuracy. Our approach extends an exisiting machine learning based approach by extracting six features from network measurements and implementing a new landmark selection policy. These enhancements allow us to mitigate problems with measurement errors and reduces average error distance in estimating location of Internet hosts. To demonstrate the accuracy of our approach, we evaluate the performance on network routers using ping measurements from PlanetLab nodes with known geographic placement. Our results demonstrate that our approach improves average accuracy by geolocating internet hosts 100 miles closer to the true geographic location versus prior measurement-based approaches.
机译:本地化Internet主机的能力吸引了从在线广告到本地化网络攻击的一系列应用。近来,已经提出了基于测量的方法以准确地识别互联网主机的位置。由于测量误差,这些方法通常会产生错误的结果。在本文中,我们提出了一种增强型学习分类器方法,用于以更高的准确性估算Internet主机的地理位置。我们的方法通过从网络测量中提取六个特征并实施新的地标选择策略,扩展了现有的基于机器学习的方法。这些增强功能使我们能够减轻测量误差带来的问题,并减少估计Internet主机位置时的平均误差距离。为了证明我们方法的准确性,我们使用来自已知地理位置的PlanetLab节点的ping测量来评估网络路由器的性能。我们的结果表明,与以前的基于测量的方法相比,我们的方法通过将互联网主机地理定位在距离真实地理位置100英里的位置,从而提高了平均准确性。

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