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A Network Anomaly Detection Algorithm based on Natural Neighborhood Graph

机译:基于自然邻域图的网络异常检测算法

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As a kind of network security protection technology, intrusion detection technology has become one of the hot topics in the field of network security. In order to solve the problem that the methods of network anomaly detection have a high requirement on the purity of the normal data-set, and that the existing methods based on outlier detection need to set an anomaly threshold manually. Combining with the idea of Natural Neighborhood Graph, a network anomaly detection method (NAD-NNG) is proposed. In order to eliminate noise points or mislabel points and reduce the time complexity of anomalies detection, the algorithm uses the Natural Neighborhood Graph to cluster the normal data-set. Also, the algorithm can adaptively obtain a percentage value β for setting the anomaly threshold. Experiments on KDDCUP99 show that compared with the other two algorithms, the proposed method can achieve a higher detection rate based on a tolerable false alarm rate.
机译:作为一种网络安全保护技术,入侵检测技术已成为网络安全领域的热门话题之一。为了解决网络异常检测方法对正常数据集的纯度具有高要求的问题,并且基于异常检测的现有方法需要手动设置异常阈值。结合自然邻域图的想法,提出了一种网络异常检测方法(NAD-NNG)。为了消除噪声点或误标记点并减少异常检测的时间复杂性,算法使用自然邻域图来聚类正常数据集。此外,该算法可以自适应地获得用于设置异常阈值的百分比值β。 KDDCUP99的实验表明,与其他两个算法相比,该方法可以基于可容许的误报率来实现更高的检测率。

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