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Application of Unbalanced Data Approach to Network Intrusion Detection

机译:不平衡数据方法在网络入侵检测中的应用

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In view of the current problems of HNIDS (high-speed network intrusion detection system), such as high packet loss rate, slow pace of testing for attacks and unbalanced data for detection. This paper presents a novel approach for HNIDS by taking two-stage strategy with load balancing model. In the on-line phase, the system captures the packets from network and split into small according the type of protocol, then detected intrusion through each sensor. In the off-line, training dataset are used to build model, which can detected intrusion. We discuss different approaches to unbalanced data, empirically evaluate the SMOTE over-sampling approaches, AdaBoost and random forests algorithm. We also discuss the approaches for selecting features. Finally report our experimental results over the KDD'99 datasets. The results show that SMOTE and the AdaBoost algorithm by using random forests as weak learner not only can provides better performance to small class, but also has lower build model time.
机译:鉴于HNIDS(高速网络入侵检测系统)的当前问题,如高丢包率,攻击和不平衡数据的慢速测试速度缓慢。本文提出了通过负载平衡模型的两阶段策略提出了一种新的HNID方法。在在线阶段,系统从网络捕获数据包并根据协议的类型分成小程序,然后通过每个传感器检测入侵。在离线中,培训数据集用于构建模型,可以检测入侵。我们讨论不同的数据方法,虚拟地评估剧本过采样方法,Adaboost和随机森林算法。我们还讨论了选择功能的方法。最后向KDD'99数据集报告我们的实验结果。结果表明,使用随机森林作为弱学习者的缺点和Adaboost算法不仅可以为小类提供更好的性能,而且还具有更低的构建模型时间。

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