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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Network-Wide Traffic Anomaly Detection and Localization Based on Robust Multivariate Probabilistic Calibration Model
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Network-Wide Traffic Anomaly Detection and Localization Based on Robust Multivariate Probabilistic Calibration Model

机译:基于鲁棒多元概率校正模型的网络流量异常检测与定位

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Network anomaly detection and localization are of great significance to network security. Compared with the traditional methods of host computer, single link and single path, the network-wide anomaly detection approaches have distinctive advantages with respect to detection precision and range. However, when facing the actual problems of noise interference or data loss, the network-wide anomaly detection approaches also suffer significant performance reduction or may even become unavailable. Besides, researches on anomaly localization are rare. In order to solve the mentioned problems, this paper presents a robust multivariate probabilistic calibration model for network-wide anomaly detection and localization. It applies the latent variable probability theory with multivariatet-distribution to establish the normal traffic model. Not only does the algorithm implement network anomaly detection by judging whether the sample’s Mahalanobis distance exceeds the threshold, but also it locates anomalies by contribution analysis. Both theoretical analysis and experimental results demonstrate its robustness and wider use. The algorithm is applicable when dealing with both data integrity and loss. It also has a stronger resistance over noise interference and lower sensitivity to the change of parameters, all of which indicate its performance stability.
机译:网络异常的检测和定位对网络安全具有重要意义。与传统的主机,单链路和单路径的方法相比,全网络范围的异常检测方法在检测精度和范围方面具有明显的优势。然而,当面对噪声干扰或数据丢失的实际问题时,全网范围的异常检测方法也会遭受性能的显着降低甚至可能变得不可用。此外,关于异常定位的研究很少。为了解决上述问题,本文提出了一种健壮的用于网络范围内异常检测和定位的多元概率校准模型。运用具有多变量分布的潜在变量概率理论建立正常交通模型。该算法不仅可以通过判断样本的Mahalanobis距离是否超过阈值来实现网络异常检测,还可以通过贡献分析来定位异常。理论分析和实验结果均证明了其稳健性和广泛的应用范围。该算法适用于处理数据完整性和丢失。它还具有较强的抗噪声干扰能力,对参数变化的敏感性较低,所有这些都表明其性能稳定。

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