Identifying intrusions in computer networks with principal component analysis

Wei Wang, R. Battiti
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引用次数: 117

Abstract

Most current anomaly intrusion detection systems (IDSs) detect computer network behavior as normal or abnormal but cannot identify the type of attacks. Moreover, most current intrusion detection methods cannot process large amounts of audit data for real-time operation. In this paper, we propose a novel method for intrusion identification in computer networks based on principal component analysis (PCA). Each network connection is transformed into an input data vector. PCA is employed to reduce the dimensionality of the data vectors and identification is handled in a low dimensional space with high efficiency and low use of system resources. The normal behavior is profiled based on normal data for anomaly detection and models of each type of attack are built based on attack data for intrusion identification. The distance between a vector and its reconstruction onto those reduced subspaces representing the different types of attacks and normal activities is used for identification. The method is tested with network data from MIT Lincoln labs for the 1998 DARPA intrusion detection evaluation program and testing results show that the model is promising in terms of identification accuracy and computational efficiency for real-time intrusion identification.
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用主成分分析法识别计算机网络入侵
目前大多数异常入侵检测系统(ids)只能检测计算机网络的正常或异常行为,但无法识别攻击的类型。而且,目前大多数入侵检测方法无法处理大量的审计数据,无法进行实时操作。本文提出了一种基于主成分分析(PCA)的计算机网络入侵识别方法。每个网络连接被转换成一个输入数据向量。采用主成分分析法对数据向量进行降维处理,在低维空间内进行识别,效率高,系统资源利用率低。基于正常数据对正常行为进行分析,用于异常检测;基于攻击数据建立各种攻击模型,用于入侵识别。向量与其重构到表示不同类型攻击和正常活动的约简子空间之间的距离用于识别。利用麻省理工学院林肯实验室1998年DARPA入侵检测评估项目的网络数据对该方法进行了测试,测试结果表明,该模型在识别精度和计算效率方面具有良好的实时入侵识别能力。
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