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Network Anomaly Detection Using Parameterized Entropy

机译:使用参数化熵检测网络异常检测

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摘要

Entropy-based anomaly detection has recently been extensively studied in order to overcome weaknesses of traditional volume and rule based approaches to network flows analysis. From many entropy measures only Shannon, Titchener and parameterized Renyi and Tsallis entropies have been applied to network anomaly detection. In the paper, our method based on parameterized entropy and supervised learning is presented. With this method we are able to detect a broad spectrum of anomalies with low false positive rate. In addition, we provide information revealing the anomaly type. The experimental results suggest that our method performs better than Shannon-based and volume-based approach.
机译:最近已经广泛研究了基于熵的异常检测,以克服传统体积的弱点和基于规则的网络流分析的方法。从许多熵措施,只有Shannon,Titchener和参数化瑞尼和Tsallis Entropies已应用于网络异常检测。本文介绍了基于参数化熵和监督学习的方法。通过这种方法,我们能够检测具有低假阳性率的广谱异常。此外,我们提供揭示异常类型的信息。实验结果表明,我们的方法比Shannon为基础和基于批量的方法更好。

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