通过数据挖掘方法的三层IDS

Tsong Song Hwang, Tsung-Ju Lee, Yuh-Jye Lee
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引用次数: 50

摘要

介绍了一种由黑名单、白名单和多类支持向量机分类器组成的三层入侵检测系统结构。第一层是黑名单,用于过滤已知的攻击,白名单用于识别正常的流量。然后利用多类SVM分类器将白名单检测到的异常流量分为PROBE、DoS、R2L和U2R四类。这里应用了许多数据挖掘和机器学习技术。我们基于KDD'99基准数据集设计了这个三层IDS。系统的入侵检测率为94.71%,诊断率为93.52%。每个连接的平均成本为0.1781。这些结果均优于KDD'99优胜者的结果。我们的三层架构设计也为实际使用提供了灵活性。网络系统管理员可以将新模式添加到黑名单中,并允许根据其网络系统环境和安全策略对白名单进行微调。
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A three-tier IDS via data mining approach
We introduced a three-tier architecture of intrusion detection system which consists of a blacklist, a whitelist and a multi-class support vector machine classifier. The first tier is the blacklist that will filter out the known attacks from the traffic and the whitelist identifies the normal traffics. The rest traffics, the anomalies detected by the whitelist, were then be classified by a multi-class SVM classifier into four categories: PROBE, DoS, R2L and U2R. Many data mining and machine learning techniques were applied here. We design this three-tier IDS based on the KDD'99 benchmark dataset. Our system has 94.71% intrusion detection rate and 93.52% diagnosis rate. The averag cost for each connection is 0.1781. All of these results are better than those of KDD'99 winner's. Our three-tier architecture design also provides the flexibility for the practical usage. The network system administrator can add the new patterns into the blacklist and allows to do fine tuning of the whitelist according to the environment of their network system and security policy.
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