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An adaptive network intrusion detection approach for the cloud environment

机译:一种适用于云环境的自适应网络入侵检测方法

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As Internet attacks grow rapidly, firewalls or network intrusion systems are indispensable. Existing approaches usually use attack signatures, machine learning or data mining algorithms to detect and stop anomaly or malicious flow. Machine learning algorithms need a set of labeled data to train the detection model, while the labeled data set is not always available. In this paper, we proposed an anomaly detection approach that is adaptive to the ever-changing network environment. The approach constructs a decision tree-based detection model for intrusion detection from unlabeled data by using an unsupervised learning algorithm called spectral clustering. And the system can easily be deployed on the cloud environment. In the experiments with the DARPA 2000 data set and the KDD Cup 1999 data set, our system shows notable improvement on the detection performance after the adaptation procedure.
机译:随着Internet攻击的迅速发展,防火墙或网络入侵系统必不可少。现有方法通常使用攻击特征,机器学习或数据挖掘算法来检测并阻止异常或恶意流。机器学习算法需要一组标记数据来训练检测模型,而标记数据集并不总是可用。在本文中,我们提出了一种适应不断变化的网络环境的异常检测方法。该方法通过使用一种称为谱聚类的无监督学习算法,构建了基于决策树的检测模型,用于从未标记的数据进行入侵检测。并且该系统可以轻松地部署在云环境中。在使用DARPA 2000数据集和KDD Cup 1999数据集进行的实验中,我们的系统在自适应程序之后显示出对检测性能的显着改善。

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