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Intrusion detection: a novel approach that combines boosting genetic fuzzy classifier and data mining techniques

机译:入侵检测:一种结合了增强型遗传模糊分类器和数据挖掘技术的新颖方法

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This paper proposes an intelligent intrusion detection system (IDS) which is an integrated approach that employs fuzziness and two of the well-known data mining techniques: namely classification and association rule mining. By using these two techniques, we adopted the idea of using an iterative rule learning that extracts out rules from the data set. Our final intention is to predict different behaviors in networked computers. To achieve this, we propose to use a fuzzy rule based genetic classifier. Our approach has two main stages. First, fuzzy association rule mining is applied and a large number of candidate rules are generated for each class. Then the rules pass through pre-screening mechanism in order to reduce the fuzzy rule search space. Candidate rules obtained after pre-screening are used in genetic fuzzy classifier to generate rules for the specified classes. Classes are defined as Normal, PRB-probe, DOS-denial of service, U2R-user to root and R2L- remote to local. Second, an iterative rule learning mechanism is employed for each class to find its fuzzy rules required to classify data each time a fuzzy rule is extracted and included in the system. A Boosting mechanism evaluates the weight of each data item in order to help the rule extraction mechanism focus more on data having relatively higher weight. Finally, extracted fuzzy rules having the corresponding weight values are aggregated on class basis to find the vote of each class label for each data item.
机译:本文提出了一种智能入侵检测系统(IDS),它是一种采用模糊性和两种众所周知的数据挖掘技术(即分类和关联规则挖掘)的集成方法。通过使用这两种技术,我们采用了从数据集中提取规则的迭代规则学习方法。我们的最终目的是预测联网计算机中的不同行为。为了实现这一点,我们建议使用基于模糊规则的遗传分类器。我们的方法有两个主要阶段。首先,应用模糊关联规则挖掘,并为每个类生成大量候选规则。然后,规则通过预筛选机制以减少模糊规则搜索空间。预筛选后获得的候选规则在遗传模糊分类器中用于生成指定类别的规则。这些类定义为“普通”,“ PRB探针”,“ DOS拒绝服务”,“ U2R用户到根”和“ R2L用户到本地”。其次,每次提取模糊规则并将其包含在系统中时,对每个类采用迭代规则学习机制以查找其对数据进行分类所需的模糊规则。 Boosting机制评估每个数据项的权重,以帮助规则提取机制更多地关注具有相对较高权重的数据。最后,将提取出的具有相应权重值的模糊规则以类为基础进行汇总,以找到每个数据项的每个类标签的投票。

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