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Detecting malicious clients in ISP networks using HTTP connectivity graph and flow information

机译:使用HTTP连接图和流信息检测ISP网络中的恶意客户端

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This paper considers an approach to identify previously undetected malicious clients in Internet Service Provider (ISP) networks by combining flow classification with a graph-based score propagation method. Our approach represents all HTTP communications between clients and servers as a weighted, near-bipartite graph, where the nodes correspond to the IP addresses of clients and servers while the links are their interconnections, weighted according to the output of a flow-based classifier. We employ a two-phase alternating score propagation algorithm on the graph to identify suspicious clients in a monitored network. Using a symmetrized weighted adjacency matrix as its input, we show that our score propagation algorithm is less vulnerable towards inflating the malicious scores of popular Web servers with high in-degrees compared to the normalization used in PageRank, a widely used graph-based method. Experimental results on a 4-hour network trace collected by a large Internet service provider showed that incorporating flow information into score propagation significantly improves the precision of the algorithm.
机译:本文考虑了一种通过将流分类与基于图的分数传播方法相结合来识别Internet Service Provider(ISP)网络中以前未被检测到的恶意客户端的方法。我们的方法将客户端和服务器之间的所有HTTP通信表示为加权的近等图,其中节点对应于客户端和服务器的IP地址,而链接是它们的互连,并根据基于流的分类器的输出进行加权。我们在图形上采用两阶段交替评分传播算法,以识别受监控网络中的可疑客户端。使用对称加权的邻接矩阵作为输入,我们表明,与广泛使用的基于图形的方法PageRank中使用的规范化相比,我们的分数传播算法较不容易夸大具有高in-degrees的流行Web服务器的恶意分数。大型Internet服务提供商收集的4小时网络跟踪的实验结果表明,将流信息整合到分数传播中可以显着提高算法的精度。

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