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Network anomaly detection based on probabilistic analysis

机译:基于概率分析的网络异常检测

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摘要

In this paper, we propose a method to detect network intrusions using anomaly detection technique based on probabilistic analysis. Victim’s computers under attack show various symptoms such as degradation of TCP throughput, increase in CPU usage, increased round trip time, frequent disconnection to the Web sites, etc. These symptoms can be used as components to construct the k -dimensional feature space of multivariate normal distribution, in which case an anomaly detection method can be applied for the detection of the attack on the distribution. These features are generally highly correlated. Thus we choose only a few of these features for the anomaly detection in multivariate normal distribution. We use Mahalanobis distance to detect the anomalies for each data, normal, and abnormal. Anomalies are identified when their square root of Mahalanobis distance exceeds certain threshold. A detailed description of the threshold setting and the various experiments are discussed in simulation results.
机译:在本文中,我们提出了一种使用基于概率分析的异常检测技术来检测网络入侵的方法。受害者的计算机正在攻击下显示各种症状,如TCP吞吐量的劣化,增加CPU使用量,增加往返时间,频繁断开到网站等。这些症状可以用作构成多变量的k-二维特征空间正态分布,在这种情况下,可以应用异常检测方法来检测对分布的攻击。这些特征通常是高度相关的。因此,我们只选择其中的一些特征对于多元正常分布中的异常检测。我们使用mahalanobis距离来检测每个数据,正常和异常的异常。当它们的Mahalanobis距离的平方根超过某些阈值时,确定了异常。在仿真结果中讨论了阈值设置和各种实验的详细描述。

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