自治系统隐藏链路的推导与关键自治系统的发现研究

Jiangbin Chen, Yujing Liu, Shuhui Chen, Xiangquan Shi
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引用次数: 0

摘要

AS关系是研究网络安全、路由劫持、路由泄漏等问题的基础。为了获得更完整的AS关系,使用机器学习(ML)模型来学习相邻链接组之间的相似性并预测隐藏链接是一种可以获得更完整AS关系的方法。ML模型选择的特征对预测结果的准确性影响较大,我们结合AS的实际地理位置信息提取了10个ML特征。经过优化,预测模型的准确率达到91.57%。在隐藏链接类型分类中,我们对小样本类型数据进行过采样并对分类器进行优化,隐藏链接类别的分类准确率达到97.42%。p2c和c2p链路的召回率分别提高了24.29%和7.17%。我们发现隐藏链路是通过AS网络中“关键AS”的变化引起网络流量传输路由的变化。AS 3549的有效路径数量最多,网络流量更倾向于选择层次较低的AS进行转发。
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Research on the derivation of AS hidden links and the Discovery of Critical AS
AS relationships are the basis for studying Internet security, route hijacking, route leakage, etc. To obtain more complete AS relationships, using machine learning (ML) models to learn the similarity between adjacent link groups and predict hidden links is a method that can obtain more complete AS relationships. The features selected by the ML model have a large impact on the accuracy of the prediction results, and we extract 10 ML features by combining the actual geographic location information of AS. After our optimization, the accuracy of the prediction model reaches 91.57%. In the classification of hidden link types, we oversample the small sample type data and optimize the classifier, and the classification accuracy of hidden link categories reaches 97.42%. The recall rate of p2c and c2p links improved by 24.29% and 7.17%, respectively. We found that the hidden links caused the change of network traffic transmission routes by the change of "Critical AS" in the AS network. AS 3549 has the highest number of effective paths, and the network traffic prefers to choose the AS with a lower hierarchy for forwarding.
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