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Reconstruction of Worm Propagation Path by Causality

机译:因果关系重建蠕虫传播路径

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Fast and accurate online tracing of network worm during its propagation is essential for worm containment and reducing the loss. Though worm is randomly spread, there exists implicit causality between adjacent infected nodes. Using this causality can help to enhance the performance of worm tracing algorithm. Bayesian Network can be a very good probability description of the current results and prior conditions. Based on the analysis of causality, we present an improved online tracing algorithm -- Bayesian Network Correlation Algorithm to acquire worm propagation path, and analyze and verify its accuracy and performance through simulation experiments. Experiment result indicates that the detection accuracy of Bayesian Network Correlation Algorithm has risen by 10% compared to our previous work, this improved algorithm is more suitable for online detection.
机译:在传播期间的网络蠕虫的快速准确在线跟踪对于蠕虫遏制并降低损失至关重要。虽然蠕虫随机传播,但相邻受感染节点之间存在隐含的因果关系。使用这种因果关系可以帮助提高蠕虫跟踪算法的性能。贝叶斯网络可以是当前结果和现有条件的非常好的概率描述。基于因果关系分析,我们提出了一种改进的在线跟踪算法 - 贝叶斯网络相关算法来获取蠕虫传播路径,通过仿真实验分析和验证其准确性和性能。实验结果表明,与我们以前的工作相比,贝叶斯网络相关算法的检测精度已经上升了10%,这种改进的算法更适合在线检测。

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