利用语义网络对抗网络威胁

Peng He, George Karabatis
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引用次数: 10

摘要

入侵检测是网络安全领域最具挑战性和最重要的任务之一。然而,传统的入侵检测技术往往无法处理复杂且不确定的网络攻击关联任务。我们建议使用语义网络来建立网络攻击之间的关系,并协助自动识别和预测相关攻击。此外,该方法还可以提高检测可能攻击的精度。实验结果表明,与网络安全领域现有的相关方法相比,使用Anderberg相似度度量的语义网络在准确率和召回率方面表现更好。具体而言,我们的贡献如下:(1)利用相似性来描述网络攻击的特征,自动构建第一模式语义网络。(2)通过加入领域专家提供的外部语义规则对第一模式语义网络进行校准,从而生成适应性更强的第二模式语义网络。(3)通过对Anderberg、Jaccard、Simple Matching和传统相关系数等不同相似性度量进行实验,评估语义网络的预测能力;我们发现“Anderberg”相似系数在精确度和召回率方面优于所有其他测试的相似度量。
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Using semantic networks to counter cyber threats
Intrusion detection is one of the most challenging tasks and of highest priority in the cyber security field; however, traditional intrusion detection techniques often fail to handle the complex and uncertain network attack correlation tasks. We propose the usage of semantic networks that build relationships among network attacks and assist in automatically identifying and predicting related attacks. Also, our method can increase the precision in detecting probable attacks. Experimental results show that our Semantic Network using the Anderberg similarity measure performs better in terms of precision and recall compared to existing correlation approaches in the cyber security domain. Specifically, our contributions are as follows: (1) We automatically construct a first mode Semantic Network from characterizing features of network attacks using similarity. (2) The first mode semantic network is calibrated by adding external semantic rules provided by domain experts, in order to generate a more adaptable second mode semantic network. (3) We evaluated the prediction capability of the semantic networks by experimenting with various similarity measures including Anderberg, Jaccard, Simple Matching and traditional correlation coefficients; we discovered that the “Anderberg” similarity coefficients outperform all other tested similarity measures in terms of precision and recall.
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