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A Novel SPITters Detection Approach with Unsupervised Density-Based Clustering

机译:基于无监督密度聚类的新型SPITters检测方法

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With the rapid popularity of VoIP, SPIT (Spam over Internet Telephony) based VoIP has become a security problem that cannot be ignored and SPITters (SPIT callers) detection turns into an urgent issue. Data mining is a practical method of SPITters detection. This paper considers three commonly used characteristics of VoIP users and presents the fact that the characteristic data distribution of SPITters in real data space is non-globular and irregular. Moreover, a novel approach is introduced to identify SPITters employing density-based clustering algorithm DBSCAN. The results on real dataset are superior to other commonly used unsupervised clustering algorithm in terms of the recall and precision of SPITter cluster.
机译:随着VoIP的迅速普及,基于SPIT(基于Internet电话的垃圾邮件)的VoIP已成为不可忽视的安全问题,而SPITter(SPIT呼叫者)的检测已成为迫在眉睫的问题。数据挖掘是SPITters检测的一种实用方法。本文考虑了VoIP用户的三种常用特征,并提出了SPITter在实际数据空间中的特征数据分布是非球形且不规则的事实。此外,介绍了一种新颖的方法来识别SPITters,它使用基于密度的聚类算法DBSCAN。就SPITter聚类的查全率和准确性而言,真实数据集上的结果优于其他常用的无监督聚类算法。

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