SPIT callers detection with unsupervised Random Forests classifier

Kentaroh Toyoda, I. Sasase
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引用次数: 15

Abstract

As VoIP (Voice over IP) grows rapidly, it is expected to prevail tremendous unsolicited advertisement calls, which type of calls is referred to SPIT (SPam over Internet Telephony). SPIT detection is more difficult to execute than email SPAM detection since the callee or SPIT detection system does not tell whether it is SPIT or legitimate call until he/she actually takes a call. Recently, many SPIT detection techniques are proposed by finding outliers of call patterns. However, most of these techniques suffer from setting a threshold to distinguish that the caller is legitimate or not and this could cause to high false negative rate or low true positive rate. This is because these techniques analyse call pattern by a single feature e.g. call frequency or average call duration. In this paper, we propose a multi-feature call pattern analysis with unsupervised Random Forests classifier, which is one of the excellent classification algorithms. We also propose two simple but helpful features for better classification. We show the effectiveness of Random Forests based classification without supervised training data and which features contribute to classification.
基于无监督随机森林分类器的SPIT呼叫者检测
随着VoIP (Voice over IP)的迅速发展,预计将会有大量的未经请求的广告电话,这种电话被称为SPIT (SPam over Internet Telephony)。恶意呼叫检测比垃圾邮件检测更难执行,因为被呼叫方或恶意呼叫检测系统在他/她实际接听电话之前无法判断这是恶意呼叫还是合法呼叫。近年来,许多语音识别技术都是通过寻找呼叫模式的异常值来实现的。然而,大多数这些技术都设置了一个阈值来区分调用者是否合法,这可能导致高假阴性率或低真阳性率。这是因为这些技术通过单个特征来分析呼叫模式,例如呼叫频率或平均呼叫时长。本文提出了一种基于无监督随机森林分类器的多特征呼叫模式分析算法,它是一种优秀的分类算法。为了更好地分类,我们还提出了两个简单但有用的特征。我们展示了在没有监督训练数据的情况下基于随机森林的分类的有效性,以及哪些特征有助于分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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