Network Anomaly Detection Using a Commute Distance Based Approach

N. Khoa, T. Babaie, S. Chawla, Z. Zaidi
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引用次数: 9

Abstract

We propose the use of commute distance, a random walk metric, to discover anomalies in network traffic data. The commute distance based anomaly detection approach has several advantages over Principal Component Analysis (PCA), which is the method of choice for this task: (i) It generalizes both distance and density based anomaly detection techniques while PCA is primarily distance-based (ii) It is agnostic about the underlying data distribution, while PCA is based on the assumption that data follows a Gaussian distribution and (iii) It is more robust compared to PCA, i.e., a perturbation of the underlying data or changes in parameters used will have a less significant effect on the output of it than PCA. Experiments and analysis on simulated and real datasets are used to validate our claims.
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基于通勤距离的网络异常检测方法
我们建议使用通勤距离(一种随机行走度量)来发现网络流量数据中的异常。与主成分分析(PCA)相比,基于通勤距离的异常检测方法具有以下几个优点:(i)它推广了基于距离和密度的异常检测技术,而PCA主要是基于距离的;(ii)它对底层数据分布不可知,而PCA基于数据遵循高斯分布的假设;(iii)与PCA相比,它更具鲁棒性,即底层数据的扰动或所使用参数的变化对其输出的影响比PCA要小。在模拟和真实数据集上进行了实验和分析,以验证我们的主张。
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