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Detecting Encrypted Traffic: A Machine Learning Approach

机译:检测加密流量:一种机器学习方法

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Detecting encrypted traffic is increasingly important for deep packet inspection (DPI) to improve the performance of intrusion detection systems. We propose a machine learning approach with several randomness tests to achieve high accuracy detection of encrypted traffic while requiring low overhead incurred by the detection procedure. To demonstrate how effective the proposed approach is, the performance of four classification methods (Naive Bayesian, Support Vector Machine, CART and AdaBoost) are explored. Our recommendation is to use CART which is not only capable of achieving an accuracy of 99.9% but also up to about 2.9 times more efficient than the second best candidate (Naieve Bayesian).
机译:对于深度数据包检查(DPI)而言,检测加密流量对于提高入侵检测系统的性能越来越重要。我们提出了一种具有几种随机性测试的机器学习方法,以实现对加密流量的高精度检测,同时要求检测过程所产生的开销较低。为了证明所提出方法的有效性,探讨了四种分类方法(朴素贝叶斯方法,支持向量机,CART和Ada​​Boost)的性能。我们的建议是使用CART,它不仅能够达到99.9%的准确度,而且还可以比第二好的候选方法(Naieve Bayesian)高出约2.9倍的效率。

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