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Application of High-Dimensional Outlier Mining Based on the Maximum Frequent Pattern Factor in Intrusion Detection

机译:高维异常挖掘在入侵检测中的最大频繁图案因子中的应用

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As the Internet applications are growing rapidly, the intrusion detection system is widely used to detect network intrusion effectively. Aiming at the high-dimensional characteristics of data in the intrusion detection system, but the traditional frequent-pattern-based outlier mining algorithm has the problems of difficulty in obtaining complete frequent patterns and high time complexity, the outlier set is further analysed to get the attack pattern of intrusion detection. The NSL-KDD dataset and UNSW-NB15 dataset are used for evaluating the proposed approach by conducting some experiments. The experiment results show that the method has good performance in detection rate, false alarm rate, and recall rate and effectively reduces the time complexity.
机译:随着互联网应用正在迅速增长,入侵检测系统广泛用于有效地检测网络侵扰。 针对入侵检测系统中的数据的高维特征,但传统的常规模式的异常挖掘算法具有难以获得频繁模式和高时间复杂性的问题,进一步分析了异常集以获得 攻击检测模式。 NSL-KDD数据集和UNSW-NB15数据集用于通过进行一些实验来评估所提出的方法。 实验结果表明,该方法在检测率,误报率和召回率方面具有良好的性能,有效地减少了时间复杂性。

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