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An intrusion detection algorithm based on multi-label learning

机译:基于多标签学习的入侵检测算法

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Aiming at some problems in current techniques of intrusion detection, this paper puts forward an intrusion detection algorithm based on multi-label k -Nearest Neighbor with multi-label and semi-supervised learning applied. For each unlabeled data, its k nearest neighbors in the training set are firstly identified. After that, based on statistical information gained from the label sets of these neighboring data, namely the number of neighboring data belonging to each possible class, MAP (maximum a posteriori) principle is utilized to determine the label set for the unlabeled data. KDD CUP99 data set is implemented to evaluate the proposed algorithm. Compared to other algorithms, the simulation results show that the performance of intrusion detection system is improved.
机译:针对当前入侵检测技术中存在的一些问题,提出了一种基于多标签k-最近邻居的多标签半监督学习的入侵检测算法。对于每个未标记的数据,首先确定其在训练集中的k个最近邻居。之后,基于从这些相邻数据的标签集获得的统计信息,即属于每个可能类别的相邻数据的数量,利用MAP(最大后验)原理来确定未标签数据的标签集。实现了KDD CUP99数据集以评估所提出的算法。仿真结果表明,与其他算法相比,入侵检测系统的性能有所提高。

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