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VoIP anomaly detection by combining OCSVM and PSO algorithm

机译:结合OCSVM和PSO算法进行VoIP异常检测

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Voice over Internet Protocol (VoIP) is an emerging technology caused a revolution in the telecommunication industry. Because of the nature of its protocols (e.g., using text-based messages and transporting over UDP), VoIP is more susceptible to Denial of Service and Social threats than other internet-based services. Hence, the VoIP security has become one of the most important issues of concern and attracted renewed interest in much of the recent researches. In this paper, we use one-class support vector machines (OCSVM) for detecting anomalies in VoIP networks, in which, a few parameters (such as error control parameter and kernel parameter) significantly affect anomaly detection accuracy, and need to be tuned. The proposed method takes the advantages of particle swarm optimization (PSO) algorithm on parameters optimization. To evaluate candidate parameters, we suggest a new fitness function that considers both the overfitting and the underfitting problems. The results of experiments show that after determining the optimal value of parameters, the final decision function will bring in a high detection rate with a lower false positive rate.
机译:互联网协议语音(VoIP)是一种新兴技术,引起了电信行业的一场革命。由于其协议的性质(例如,使用基于文本的消息并通过UDP传输),VoIP比其他基于Internet的服务更容易受到拒绝服务和社交威胁的影响。因此,VoIP安全已成为最重要的关注问题之一,并且在最近的许多研究中引起了新的兴趣。在本文中,我们使用一类支持向量机(OCSVM)来检测VoIP网络中的异常,其中一些参数(例如错误控制参数和内核参数)会显着影响异常检测的准确性,因此需要对其进行调整。该方法利用了粒子群算法在参数优化中的优势。为了评估候选参数,我们建议一个新的适应度函数,该函数同时考虑过拟合和欠拟合问题。实验结果表明,在确定参数的最优值后,最终决策函数将带来较高的检测率和较低的误报率。

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