Improved Intrusion Detection System Using Fuzzy Logic for Detecting Anamoly and Misuse Type of Attacks

Bharanidharan Shanmugam, N. Idris
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引用次数: 50

Abstract

Currently available intrusion detection systems focus mainly on determining uncharacteristic system events in distributed networks using signature based approach. Due to its limitation of finding novel attacks, we propose a hybrid model based on improved fuzzy and data mining techniques, which can detect both misuse and anomaly attacks. The aim of our research is to reduce the amount of data retained for processing i.e., attribute selection process and also to improve the detection rate of the existing IDS using data mining technique. We then use improved Kuok fuzzy data mining algorithm, which in turn a modified version of APRIORI algorithm, for implementing fuzzy rules, which allows us to construct if-then rules that reflect common ways of describing security attacks. We applied fuzzy inference engine using mamdani inference mechanism with three variable inputs for faster decision making. The proposed model has been tested and benchmarked against DARPA 1999 data set for its efficiency and also tested against the “live” networking environment inside the campus and the results has been discussed.
基于模糊逻辑的改进入侵检测系统检测异常和误用类型的攻击
目前可用的入侵检测系统主要采用基于签名的方法来确定分布式网络中的非特征系统事件。由于发现新攻击的局限性,我们提出了一种基于改进模糊和数据挖掘技术的混合模型,该模型既可以检测误用攻击,也可以检测异常攻击。我们的研究目的是减少用于处理(即属性选择过程)的数据量,并利用数据挖掘技术提高现有入侵检测系统的检测率。然后,我们使用改进的Kuok模糊数据挖掘算法,该算法又是APRIORI算法的修改版本,用于实现模糊规则,这允许我们构建反映描述安全攻击的常见方法的if-then规则。我们采用模糊推理引擎,采用三变量输入的mamdani推理机制,提高决策速度。该模型已在DARPA 1999数据集上进行了效率测试和基准测试,并在校园内的“实时”网络环境下进行了测试,并对结果进行了讨论。
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