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Behavior-based approach to detect spam over IP telephony attacks

机译:基于行为的方法来检测IP电话攻击中的垃圾邮件

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摘要

Spam over IP telephony (SPIT) is expected to become a serious problem as the use of voice over IP grows. This kind of spam is appreciated by spammers due to its effectiveness and low cost. Many anti-SPIT solutions are applied to resolve this problem but there are still limited in some cases. Thus, in this paper, we propose a system to detect SPIT attacks through behavior-based approach. Our framework operates in three steps: (1) collecting significant calls attributes by exploring and analyzing network traces using OPNET environment; (2) applying sliding windows strategy to properly maintain the callers profiles; and (3) classifying caller (i.e., legitimate or SPITter) using ten supervised learning methods: Na < veBayes, BayesNet, SMO RBFKernel, SMO PolyKernel, MultiLayerPerceptron with two and three layers, NBTree, J48, Bagging and AdaBoostM1. The results of our experiments demonstrate the great performance of these methods. Our study, based on receiver operating characteristics curves, shows that the AdaBoostM1 classifier is more efficient than the other methods and achieve an almost perfect detection rate with acceptable training time.
机译:随着IP语音的使用不断增长,预计IP电话垃圾邮件(SPIT)将成为一个严重的问题。这种垃圾邮件由于其有效性和低成本而受到垃圾邮件制造者的赞赏。许多反SPIT解决方案可用于解决此问题,但在某些情况下仍然存在局限性。因此,在本文中,我们提出了一种通过基于行为的方法来检测SPIT攻击的系统。我们的框架分为三个步骤:(1)通过使用OPNET环境探索和分析网络跟踪来收集重要的呼叫属性; (2)应用滑动窗口策略以正确维护呼叫者个人资料; (3)使用十种监督学习方法对呼叫者(即合法或SPITter)进行分类:Na veBayes,BayesNet,SMO RBFKernel,SMO PolyKernel,具有两层和三层的MultiLayerPerceptron,NBTree,J48,Bagging和AdaBoostM1。我们的实验结果证明了这些方法的出色性能。我们基于接收器工作特性曲线的研究表明,AdaBoostM1分类器比其他方法更有效,并且可以在可接受的训练时间下实现几乎完美的检测率。

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