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Parzen-window network intrusion detectors

机译:Parzen窗口网络入侵检测器

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Network intrusion detection is the problem of detecting anomalous network connections caused by intrusive activities. Many intrusion detection systems proposed before use both normal and intrusion data to build their classifiers. However, intrusion data are usually scarce and difficult to collect. We propose to solve this problem using a novelty detection approach. In particular, we propose to take a nonparametric density estimation approach based on Parzen-window estimators with Gaussian kernels to build an intrusion detection system using normal data only. To facilitate comparison, we have tested our system on the KDD Cup 1999 dataset. Our system compares favorably with the KDD Cup winner which is based on an ensemble of decision trees with bagged boosting, as our system uses no intrusion data at all and much less normal data for training.
机译:网络入侵检测是检测由入侵活动引起的异常网络连接的问题。之前提出的许多入侵检测系统都使用正常数据和入侵数据来构建其分类器。但是,入侵数据通常很少而且很难收集。我们建议使用新颖性检测方法来解决此问题。特别是,我们建议采用基于具有高斯核的Parzen窗口估计器的非参数密度估计方法,以仅使用常规数据构建入侵检测系统。为了便于比较,我们在KDD Cup 1999数据集中测试了我们的系统。我们的系统与KDD杯优胜者相比,后者优胜劣汰是基于决策树与袋装助推器的集合,因为我们的系统完全不使用入侵数据,而很少使用常规数据进行训练。

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