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首页> 外文期刊>International journal of computer science and network security >Correlating Intrusion Alerts into Attack Scenarios based on Improved Evolving Self-Organizing Maps
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Correlating Intrusion Alerts into Attack Scenarios based on Improved Evolving Self-Organizing Maps

机译:基于改进的不断发展的自组织映射,将入侵警报与攻击场景相关联

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Traditional intrusion detection systems (IDSs) focus on low-level attacks and anomalies, and raise alerts independently, though there may be logical connections between them. In this paper, a method of correlating intrusion alerts into attack scenarios based on the improved evolving self-organizing map (IESOM) was proposed. IESOM gives a rational formula to calculate the initial values of connection strengths instead of assigning some experiential or tentative constants as connection strength values in ESOM. IESOM is an evolving extension of the self-organizing map (SOM) model, which allows for an evolvable network structure and very fast incremental learning. System of correlating intrusion alerts into attack scenarios based on IESOM has four functions of filtering, aggregation, condensing and combination, and the visual attack scenarios are given as the output of the system. The results on LLS DDOS1.0 and real-word dataset B prove that our method is useful and effective.
机译:传统入侵检测系统(IDS)专注于低级攻击和异常,并且独立地发出警报,尽管它们之间可能存在逻辑连接。本文提出了一种基于改进的进化自组织图(IESOM)的入侵预警与攻击场景关联的方法。 IESOM给出了一个合理的公式来计算连接强度的初始值,而不是在ESOM中分配一些经验或试验性常数作为连接强度值。 IESOM是自组织映射(SOM)模型的不断发展的扩展,它允许可演化的网络结构和非常快速的增量学习。基于IESOM的将入侵警报关联到攻击场景的系统具有过滤,聚合,压缩和组合四个功能,并给出了视觉攻击场景作为系统的输出。 LLS DDOS1.0和实词数据集B的结果证明了我们的方法是有效的。

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